Merge remote-tracking branch 'origin/master'
This commit is contained in:
6
.gitignore
vendored
6
.gitignore
vendored
@@ -1,2 +1,4 @@
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cmake-build-debug/*
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.idea/*
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cmake-build-debug
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.idea
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tools/TrainCNN/.idea
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tools/TrainCNN/__pycache__
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@@ -1,6 +1,6 @@
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cmake_minimum_required(VERSION 3.5)
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project(auto-aim)
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project(AutoAim)
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set(CMAKE_CXX_STANDARD 11)
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SET(CMAKE_BUILD_TYPE DEBUG)
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@@ -18,11 +18,17 @@ FIND_PACKAGE(Threads)
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include_directories( ${EIGEN3_INCLUDE_DIR} )
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include_directories( ${PROJECT_SOURCE_DIR}/energy/include )
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include_directories( ${PROJECT_SOURCE_DIR}/armor/include )
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include_directories( ${PROJECT_SOURCE_DIR}/include )
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include_directories( ${PROJECT_SOURCE_DIR}/others/include )
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FILE(GLOB_RECURSE sourcefiles "src/*.cpp" "energy/src/*cpp" "armor/src/*.cpp")
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FILE(GLOB_RECURSE sourcefiles "others/src/*.cpp" "energy/src/*cpp" "armor/src/*.cpp")
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add_executable(run main.cpp ${sourcefiles} )
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TARGET_LINK_LIBRARIES(run ${CMAKE_THREAD_LIBS_INIT})
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TARGET_LINK_LIBRARIES(run ${OpenCV_LIBS})
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TARGET_LINK_LIBRARIES(run ${PROJECT_SOURCE_DIR}/libMVSDK.so)
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TARGET_LINK_LIBRARIES(run ${PROJECT_SOURCE_DIR}/others/libMVSDK.so)
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# Todo
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# ADD_CUSTOM_TARGET(bind-monitor COMMAND "")
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# Todo
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# ADD_CUSTOM_TARGET(train COMMAND "")
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@@ -32,7 +32,8 @@ private:
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MatrixXd relu(const MatrixXd &input);
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vector<vector<MatrixXd>> apply_bias(const vector<vector<MatrixXd>> &input, const vector<double> &bias);
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vector<vector<MatrixXd>> relu(const vector<vector<MatrixXd>> &input);
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vector<vector<MatrixXd>> pool(const vector<vector<MatrixXd>> &input, int size);
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vector<vector<MatrixXd>> max_pool(const vector<vector<MatrixXd>> &input, int size);
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vector<vector<MatrixXd>> mean_pool(const vector<vector<MatrixXd>> &input, int size);
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vector<vector<MatrixXd>> pand(const vector<vector<MatrixXd>> &input, int val);
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MatrixXd conv(const MatrixXd &filter, const MatrixXd &input);
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vector<vector<MatrixXd>> conv2(const vector<vector<MatrixXd>> &filter, const vector<vector<MatrixXd>> &input);
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@@ -2,6 +2,7 @@
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// Created by xinyang on 19-4-19.
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//
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//#define LOG_LEVEL LOG_NONE
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#include <armor_finder/classifier/classifier.h>
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#include <log.h>
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#include <cstdio>
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@@ -91,7 +92,33 @@ MatrixXd Classifier::softmax(const MatrixXd &input){
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return tmp.array().exp() / tmp.array().exp().sum();
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}
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vector<vector<MatrixXd>> Classifier::pool(const vector<vector<MatrixXd>> &input, int size){
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vector<vector<MatrixXd>> max_pool(const vector<vector<MatrixXd>> &input, int size){
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vector<vector<MatrixXd>> output;
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for(int sample=0; sample<input.size(); sample++) {
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vector<MatrixXd> sub;
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for (int channel = 0; channel < input[0].size(); channel++) {
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MatrixXd tmp(input[0][0].rows() / size, input[0][0].cols() / size);
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for (int row = 0; row < input[0][0].rows() / size; row++) {
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for (int col = 0; col < input[0][0].cols() / size; col++) {
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double max = 0;
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for (int x = 0; x < size; x++) {
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for (int y = 0; y < size; y++) {
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if(max < input[sample][channel](row * size + x, col * size + y)){
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max = input[sample][channel](row * size + x, col * size + y);
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}
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}
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}
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tmp(row, col) = max;
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}
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}
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sub.emplace_back(tmp);
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}
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output.emplace_back(sub);
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}
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return output;
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}
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vector<vector<MatrixXd>> Classifier::mean_pool(const vector<vector<MatrixXd>> &input, int size){
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vector<vector<MatrixXd>> output;
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for(int sample=0; sample<input.size(); sample++) {
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vector<MatrixXd> sub;
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@@ -240,9 +267,9 @@ Classifier::Classifier(const string &folder) : state(true){
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MatrixXd Classifier::calculate(const vector<vector<MatrixXd>> &input) {
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vector<vector<MatrixXd>> conv1_result = relu(apply_bias(conv2(conv1_w, input), conv1_b));
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vector<vector<MatrixXd>> pool1_result = pool(conv1_result, 2);
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vector<vector<MatrixXd>> pool1_result = mean_pool(conv1_result, 2);
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vector<vector<MatrixXd>> conv2_result = relu(apply_bias(conv2(conv2_w, pool1_result), conv2_b));
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vector<vector<MatrixXd>> pool2_result = pool(conv2_result, 2);
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vector<vector<MatrixXd>> pool2_result = mean_pool(conv2_result, 2);
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MatrixXd flattened = flatten(pool2_result);
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MatrixXd y1 = fc1_w * flattened;
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y1.colwise() += fc1_b;
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@@ -260,7 +287,7 @@ Classifier::operator bool() const {
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int Classifier::operator()(const cv::Mat &image) {
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MatrixXd x;
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cv2eigen(image, x);
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x /= 255;
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x /= 255.0;
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vector<MatrixXd> sub = {x};
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vector<vector<MatrixXd>> in = {sub};
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MatrixXd result = calculate(in);
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16
main.cpp
16
main.cpp
@@ -4,14 +4,14 @@
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#include <iostream>
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#include <opencv2/core/core.hpp>
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#include "energy/energy.h"
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#include "uart/uart.h"
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#include "energy/param_struct_define.h"
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#include "energy/constant.h"
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#include "camera/camera_wrapper.h"
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#include "camera/video_wrapper.h"
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#include "camera/wrapper_head.h"
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#include "armor_finder/armor_finder.h"
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#include <energy/energy.h>
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#include <uart/uart.h>
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#include <energy/param_struct_define.h>
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#include <energy/constant.h>
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#include <camera/camera_wrapper.h>
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#include <camera/video_wrapper.h>
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#include <camera/wrapper_head.h>
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#include <armor_finder/armor_finder.h>
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#include <options/options.h>
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#include <log.h>
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123
tools/TrainCNN/backward.py
Normal file
123
tools/TrainCNN/backward.py
Normal file
@@ -0,0 +1,123 @@
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import tensorflow as tf
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from progressive.bar import Bar
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import generate
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import forward
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def save_kernal(fp, val):
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print(val.shape[2], file=fp)
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print(val.shape[3], file=fp)
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print(val.shape[1], file=fp)
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print(val.shape[0], file=fp)
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for in_channel in range(val.shape[2]):
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for out_channel in range(val.shape[3]):
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for row in range(val.shape[0]):
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for col in range(val.shape[1]):
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print(val[row][col][in_channel][out_channel], file=fp)
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def save_weight_mat(fp, val):
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print(val.shape[0], file=fp)
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print(val.shape[1], file=fp)
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for row in range(val.shape[0]):
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for col in range(val.shape[1]):
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print(val[row][col], file=fp)
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def save_bias(fp, val):
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print(val.shape[0], file=fp)
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for i in range(val.shape[0]):
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print(val[i], file=fp)
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def save_para(folder, paras):
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with open(folder + "/conv1_w", "w") as fp:
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save_kernal(fp, paras[0])
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with open(folder + "/conv1_b", "w") as fp:
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save_bias(fp, paras[1])
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with open(folder + "/conv2_w", "w") as fp:
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save_kernal(fp, paras[2])
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with open(folder + "/conv2_b", "w") as fp:
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save_bias(fp, paras[3])
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with open(folder + "/fc1_w", "w") as fp:
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save_weight_mat(fp, paras[4])
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with open(folder + "/fc1_b", "w") as fp:
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save_bias(fp, paras[5])
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with open(folder + "/fc2_w", "w") as fp:
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save_weight_mat(fp, paras[6])
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with open(folder + "/fc2_b", "w") as fp:
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save_bias(fp, paras[7])
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STEPS = 30000
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BATCH = 10
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LEARNING_RATE_BASE = 0.01
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LEARNING_RATE_DECAY = 0.99
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MOVING_AVERAGE_DECAY = 0.99
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def train(dataset, show_bar=False):
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test_images, test_labels = dataset.all_test_sets()
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x = tf.placeholder(tf.float32, [None, forward.SRC_ROWS, forward.SRC_COLS, forward.SRC_CHANNELS])
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y_= tf.placeholder(tf.float32, [None, forward.OUTPUT_NODES])
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nodes, vars = forward.forward(0.001)
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y = nodes[-1]
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ce = tf.nn.sparse_softmax_cross_entropy_with_logits(logits=y, labels=tf.argmax(y_, 1))
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cem = tf.reduce_mean(ce)
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loss= cem + tf.add_n(tf.get_collection("losses"))
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global_step = tf.Variable(0, trainable=False)
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learning_rate = tf.train.exponential_decay(
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LEARNING_RATE_BASE,
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global_step,
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len(dataset.train_sets) / BATCH,
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LEARNING_RATE_DECAY,
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staircase=False)
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train_step = tf.train.AdamOptimizer(learning_rate).minimize(loss, global_step=global_step)
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ema = tf.train.ExponentialMovingAverage(MOVING_AVERAGE_DECAY, global_step)
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ema_op = ema.apply(tf.trainable_variables())
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with tf.control_dependencies([train_step, ema_op]):
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train_op = tf.no_op(name='train')
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correct_prediction = tf.equal(tf.argmax(y, 1), tf.argmax(y_, 1))
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accuracy = tf.reduce_mean(tf.cast(correct_prediction, tf.float32))
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acc = 0
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with tf.Session() as sess:
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init_op = tf.global_variables_initializer()
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sess.run(init_op)
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if show_bar:
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bar = Bar(max_value=STEPS, width=u'50%')
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bar.cursor.clear_lines(1)
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bar.cursor.save()
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for i in range(STEPS):
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images_samples, labels_samples = dataset.sample_train_sets(BATCH)
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_, loss_value, step = sess.run(
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[train_op, loss, global_step],
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feed_dict={x: images_samples, y_: labels_samples}
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)
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if i % 100 == 0:
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if i % 1000 == 0:
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acc = sess.run(accuracy, feed_dict={x: test_images, y_: test_labels})
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if show_bar:
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bar.title = "step: %d, loss: %f, acc: %f" % (step, loss_value, acc)
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bar.cursor.restore()
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bar.draw(value=i+1)
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vars_val = sess.run(vars)
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save_para("paras", vars_val)
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# nodes_val = sess.run(nodes, feed_dict={x:test})
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# return vars_val, nodes_val
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if __name__ == "__main__":
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dataset = generate.DataSet("images")
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train(dataset, show_bar=True)
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98
tools/TrainCNN/forward.py
Normal file
98
tools/TrainCNN/forward.py
Normal file
@@ -0,0 +1,98 @@
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import tensorflow as tf
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def get_weight(shape, regularizer=None):
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w = tf.Variable(tf.truncated_normal(shape, stddev=0.1))
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if regularizer is None:
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tf.add_to_collection('losses', tf.contrib.layers.l2_regularizer(regularizer)(w))
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return w
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def get_bias(shape):
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b = tf.Variable(tf.zeros(shape))
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return b
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def conv2d(x, w):
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return tf.nn.conv2d(x, w, strides=[1, 1, 1, 1], padding="VALID")
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def avg_pool_2x2(x):
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return tf.nn.avg_pool(x, ksize=[1, 2, 2, 1], strides=[1, 2, 2, 1], padding="VALID")
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def max_pool_2x2(x):
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return tf.nn.max_pool(x, ksize=[1, 2, 2, 1], strides=[1, 2, 2, 1], padding="VALID")
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# 原图像行数
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SRC_ROWS = 36
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# 原图像列数
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SRC_COLS = 48
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# 原图像通道数
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SRC_CHANNELS = 1
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# 第一层卷积核大小
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CONV1_KERNAL_SIZE = 5
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# 第一层卷积输出通道数
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CONV1_OUTPUT_CHANNELS = 8
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# 第二层卷积核大小
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CONV2_KERNAL_SIZE = 3
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# 第二层卷积输出通道数
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CONV2_OUTPUT_CHANNELS = 16
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# 第一层全连接宽度
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FC1_OUTPUT_NODES = 32
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# 第二层全连接宽度(输出标签类型数)
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FC2_OUTPUT_NODES = 8
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# 输出标签类型数
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OUTPUT_NODES = FC2_OUTPUT_NODES
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def forward(x, regularizer=None):
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vars = []
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nodes = []
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conv1_w = get_weight(
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[CONV1_KERNAL_SIZE, CONV1_KERNAL_SIZE, 1, CONV1_OUTPUT_CHANNELS]
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)
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conv1_b = get_bias([CONV1_OUTPUT_CHANNELS])
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conv1 = tf.nn.relu(tf.nn.bias_add(conv2d(x, conv1_w), conv1_b))
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pool1 = avg_pool_2x2(conv1)
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vars.extend([conv1_w, conv1_b])
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nodes.extend([conv1, pool1])
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conv2_w = get_weight(
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[CONV2_KERNAL_SIZE, CONV2_KERNAL_SIZE, CONV1_OUTPUT_CHANNELS, CONV2_OUTPUT_CHANNELS]
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)
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conv2_b = get_bias([CONV2_OUTPUT_CHANNELS])
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conv2 = tf.nn.relu(tf.nn.bias_add(conv2d(pool1, conv2_w), conv2_b))
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pool2 = avg_pool_2x2(conv2)
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vars.extend([conv2_w, conv2_b])
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nodes.extend([conv2, pool2])
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pool_shape = pool2.get_shape().as_list()
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node = pool_shape[1] * pool_shape[2] * pool_shape[3]
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reshaped = tf.reshape(pool2, [-1, node])
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fc1_w = get_weight([node, FC1_OUTPUT_NODES], regularizer)
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fc1_b = get_bias([FC1_OUTPUT_NODES])
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fc1 = tf.nn.relu(tf.matmul(reshaped, fc1_w) + fc1_b)
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vars.extend([fc1_w, fc1_b])
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nodes.extend([fc1])
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fc2_w = get_weight([FC1_OUTPUT_NODES, FC2_OUTPUT_NODES], regularizer)
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fc2_b = get_bias([FC2_OUTPUT_NODES])
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fc2 = tf.nn.softmax(tf.matmul(fc1, fc2_w) + fc2_b)
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vars.extend([fc2_w, fc2_b])
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nodes.extend([fc2])
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return nodes, vars
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49
tools/TrainCNN/generate.py
Normal file
49
tools/TrainCNN/generate.py
Normal file
@@ -0,0 +1,49 @@
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import numpy as np
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import os
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import cv2
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import random
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from forward import OUTPUT_NODES
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class DataSet:
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def __init__(self, folder):
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self.train_sets = []
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self.test_sets = []
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self.generate_data_sets(folder)
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def generate_data_sets(self, folder):
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def file2nparray(name):
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image = cv2.imread(name)
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return image[:, :, 0]
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def id2label(id):
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a = np.zeros([OUTPUT_NODES, 1])
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a[id] = 1
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return a[:]
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sets = []
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for i in range(OUTPUT_NODES):
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dir = "%s/%d" % (folder, i)
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files = os.listdir(dir)
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for file in files:
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sets.append([file2nparray("%s/%s" % (dir, file)), id2label(i)])
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sets = np.array(sets)
|
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np.random.shuffle(sets)
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length = len(sets)
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self.train_sets = sets[:length*3//4]
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self.test_sets = sets[length*3//4:]
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def sample_train_sets(self, length):
|
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samples = []
|
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labels = []
|
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for i in range(length):
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id = random.randint(0, length-1)
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samples.append(self.train_sets[id][0])
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labels.append(self.train_sets[id][1])
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return np.array(samples), np.array(labels)
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|
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def all_train_sets(self):
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return self.train_sets[:, 0, :, :], self.train_sets[:, 1, :, :]
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|
||||
def all_test_sets(self):
|
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return self.test_sets[:, 0, :, :], self.test_sets[:, 1, :, :]
|
||||
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