姓名:刘哲宁
【嵌牛导读】:深度强化学习
【嵌牛鼻子】:深度卷积网络,深度学习,强化学习
【嵌牛提问】:深度学习和强化学习如何结合?
【嵌牛正文】:
1 强化学习是一种什么样的方法
强化学习作为一个序列决策(Sequential Decision Making)问题,它需要连续选择一些行为,从这些行为完成后得到最大的收益作为最好的结果。它在没有任何label告诉算法应该怎么做的情况下,通过先尝试做出一些行为——然后得到一个结果,通过判断这个结果是对还是错来对之前的行为进行反馈。由这个反馈来调整之前的行为,通过不断的调整算法能够学习到在什么样的情况下选择什么样的行为可以得到最好的结果。
2 通俗语言解释
我们训练出一个人工大脑Agent,这个Agent可以对环境Environment中的状态Status做出判断,读取环境的状态,并做出行动Action.
这个人工大脑做出行动之后,环境会根据受到的来自Agent的行动给这个Agent进行反馈Reward,这个人工大脑会根具环境的反馈做出改进,从而做出更好Improve的行动.
就是这样一个循环往复的过程,Agent不断地尝试,不断地改进自己。
那么如何让Agent变得足够远见,能够从长远的角度优化当前固定行动,而不是急功近利呢。所以Agent 每一步都要需要向着获得最大利益那边靠齐。
3 具体案例 Flappy Bird with DQ
这里写图片描述
在这个案例里面就要实现一个人工大脑。
这个Agent可以读取游戏的画面,然后判断是点击屏幕还是不动以控制小鸟飞跃障碍物。
经过长时间的训练,得到的Agent几乎可以一直玩下去。
训练一个小时之后
训练了一个小时之后
可以看到刚开始的时候还不是很流畅。
对于这样一个游戏来说。
Agent 即我们用来读取图像信息并做出分析的CNN网络
Environment 即这个已经封装起来的游戏,输入Action,并反馈回来Reward和Status(S_t+1)(还有是否游戏结束状态即terminal,这个 也可以视为Reward)
Action 即对屏幕的点击操作,选择点击或者不点击
Reward 即环境对Action的反馈
Status 即环境目前的状态 S_t
以上就是一个深度强化网络所需的五大要素,我们整个代码实现都是围绕这五个要素来进行逻辑实现。
代码逻辑结构
整个代码逻辑相对来说比较复杂,且听我娓娓道来。
1 我们从对游戏图像的分析开始,在无输入的时候,初始化游戏图像数据,进行基本处理,将图像转化为80 804 的矩阵Status即s_t,以这个数据矩阵作为神经网络的输入。
# 初始化
# 将图像转化为80*80*4 的矩阵
do_nothing = np.zeros(ACTIONS)
do_nothing[0] = 1
x_t, r_0, terminal = game_state.frame_step(do_nothing)
# 将图像转换成80*80,并进行灰度化
x_t = cv2.cvtColor(cv2.resize(x_t, (80, 80)), cv2.COLOR_BGR2GRAY)
# 对图像进行二值化
ret, x_t = cv2.threshold(x_t, 1, 255, cv2.THRESH_BINARY)
# 将图像处理成4通道
s_t = np.stack((x_t, x_t, x_t, x_t), axis=2)
第一阶段循环开始
2 将Status即s_t输入到Agent即CNN网络中得到分析结构(二分类),并由分析结果readout _t通过得到Action即a _t
# 将当前环境输入到CNN网络中
readout_t = readout.eval(feed_dict={s: [s_t]})[0]
a_t = np.zeros([ACTIONS])
action_index = 0
if t % FRAME_PER_ACTION == 0:
if random.random() <= epsilon:
print("----------Random Action----------")
action_index = random.randrange(ACTIONS)
a_t[random.randrange(ACTIONS)] = 1
else:
action_index = np.argmax(readout_t)
a_t[action_index] = 1
else:
a_t[0] = 1 # do nothing
3 将Action即a _t输入到Environment即game _state游戏中,得到Reward即r _t和s _t1和terminal
# 其次,执行选择的动作,并保存返回的状态、得分。
x_t1_colored, r_t, terminal = game_state.frame_step(a_t)
x_t1 = cv2.cvtColor(cv2.resize(x_t1_colored, (80, 80)), cv2.COLOR_BGR2GRAY)
ret, x_t1 = cv2.threshold(x_t1, 1, 255, cv2.THRESH_BINARY)
x_t1 = np.reshape(x_t1, (80, 80, 1))
s_t1 = np.append(x_t1, s_t[:, :, :3], axis=2)
4 将这些经验数据进行保存
D.append((s_t, a_t, r_t, s_t1, terminal))
这是前10000次的循环,在通过分析结果readout
_t得到Action的过程中,加入随机因素,使得Agent有一定的概率进行随机选择Action. 而且前面的循环是没有强化过程的步骤的,就是要积累数据
# 缩小 epsilon
if epsilon > FINAL_EPSILON and t > OBSERVE:
epsilon -= (INITIAL_EPSILON - FINAL_EPSILON) / EXPLORE
后面的循环,随着循环的进步,不断Agent随机选择Action的概率。 开始循环开始才有强化过程
第二阶段循环开始
2 将Status即s_t输入到Agent即CNN网络中得到分析结构(二分类),并由分析结果readout _t通过得到Action即a _t
3 将Action即a _t输入到Environment即game _state游戏中,得到Reward即r _t和s _t1和terminal
4 将这些经验数据进行保存D.append((s_t, a_t, r_t, s_t1, terminal))
5 从D中抽取一定数量BATCH的经验数据
minibatch = random.sample(D, BATCH)
# 从经验池D中随机提取马尔科夫序列
s_j_batch = [d[0] for d in minibatch]
a_batch = [d[1] for d in minibatch]
r_batch = [d[2] for d in minibatch]
s_j1_batch = [d[3] for d in minibatch]
6 此处是关键所在,y_batch表示标签值,如果下一时刻游戏关闭则直接用奖励做标签值,若游戏没有关闭,则要在奖励的基础上加上GAMMA比例的下一时刻最大的模型预测值
y_batch = []
readout_j1_batch = readout.eval(feed_dict={s: s_j1_batch})
for i in range(0, len(minibatch)):
terminal = minibatch[i][4]
# if terminal, only equals reward
if terminal:
y_batch.append(r_batch[i])
else:
y_batch.append(r_batch[i] + GAMMA * np.max(readout_j1_batch[i]))
7 强化学习过程,此处采用了梯度下降对整个预测值进行收敛,通过对标签值与当前模型预估行动的差值进行分析
a = tf.placeholder("float", [None, ACTIONS])
y = tf.placeholder("float", [None])
readout_action = tf.reduce_sum(tf.multiply(readout, a), reduction_indices=1)
cost = tf.reduce_mean(tf.square(y - readout_action))
train_step = tf.train.AdamOptimizer(1e-6).minimize(cost)
# perform gradient step
train_step.run(feed_dict={
y: y_batch,
a: a_batch,
s: s_j_batch}
)
综上 ,这个模型的主要框架即是如此。
源代码如下
#!/usr/bin/env python
from __future__ import print_function
import tensorflow as tf
import cv2
import sys
sys.path.append("game/")
import wrapped_flappy_bird as game
import random
import numpy as np
from collections import deque
GAME = 'bird' # the name of the game being played for log files
ACTIONS = 2 # number of valid actions
GAMMA = 0.99 # decay rate of past observations
OBSERVE = 10000. # timesteps to observe before training
EXPLORE = 2000000. # frames over which to anneal epsilon
FINAL_EPSILON = 0.0001 # final value of epsilon
INITIAL_EPSILON = 0.0001 # starting value of epsilon
REPLAY_MEMORY = 50000 # number of previous transitions to remember
BATCH = 32 # size of minibatch
FRAME_PER_ACTION = 1
# CNN 模型
# 权重
def weight_variable(shape):
initial = tf.truncated_normal(shape, stddev=0.01)
return tf.Variable(initial)
# 偏置
def bias_variable(shape):
initial = tf.constant(0.01, shape=shape)
return tf.Variable(initial)
# 卷积函数
def conv2d(x, W, stride):
return tf.nn.conv2d(x, W, strides=[1, stride, stride, 1], padding="SAME")
# 池化 核 2*2 步长2
def max_pool_2x2(x):
return tf.nn.max_pool(x, ksize=[1, 2, 2, 1], strides=[1, 2, 2, 1], padding="SAME")
# 创建网络
def createNetwork():
# network weights
W_conv1 = weight_variable([8, 8, 4, 32])
b_conv1 = bias_variable([32])
W_conv2 = weight_variable([4, 4, 32, 64])
b_conv2 = bias_variable([64])
W_conv3 = weight_variable([3, 3, 64, 64])
b_conv3 = bias_variable([64])
W_fc1 = weight_variable([1600, 512])
b_fc1 = bias_variable([512])
W_fc2 = weight_variable([512, ACTIONS])
b_fc2 = bias_variable([ACTIONS])
# 输入层 输入向量为80*80*4
# input layer
s = tf.placeholder("float", [None, 80, 80, 4])
# hidden layers
# 第一个隐藏层+一个池化层
h_conv1 = tf.nn.relu(conv2d(s, W_conv1, 4) + b_conv1)
h_pool1 = max_pool_2x2(h_conv1)
# 第二个隐藏层
h_conv2 = tf.nn.relu(conv2d(h_pool1, W_conv2, 2) + b_conv2)
# h_pool2 = max_pool_2x2(h_conv2)
# 第三个隐藏层
h_conv3 = tf.nn.relu(conv2d(h_conv2, W_conv3, 1) + b_conv3)
# h_pool3 = max_pool_2x2(h_conv3)
# 展平
# h_pool3_flat = tf.reshape(h_pool3, [-1, 256])
h_conv3_flat = tf.reshape(h_conv3, [-1, 1600])
# 第一个全连接层
h_fc1 = tf.nn.relu(tf.matmul(h_conv3_flat, W_fc1) + b_fc1)
# 输出层
# readout layer
readout = tf.matmul(h_fc1, W_fc2) + b_fc2
return s, readout, h_fc1
def trainNetwork(s, readout, h_fc1, sess):
# 定义损失函数
# define the cost function
a = tf.placeholder("float", [None, ACTIONS])
y = tf.placeholder("float", [None])
readout_action = tf.reduce_sum(tf.multiply(readout, a), reduction_indices=1)
cost = tf.reduce_mean(tf.square(y - readout_action))
train_step = tf.train.AdamOptimizer(1e-6).minimize(cost)
# open up a game state to communicate with emulator
game_state = game.GameState()
# store the previous observations in replay memory
D = deque()
# printing
a_file = open("logs_" + GAME + "/readout.txt", 'w')
h_file = open("logs_" + GAME + "/hidden.txt", 'w')
# 初始化
# 将图像转化为80*80*4 的矩阵
do_nothing = np.zeros(ACTIONS)
do_nothing[0] = 1
x_t, r_0, terminal = game_state.frame_step(do_nothing)
# 将图像转换成80*80,并进行灰度化
x_t = cv2.cvtColor(cv2.resize(x_t, (80, 80)), cv2.COLOR_BGR2GRAY)
# 对图像进行二值化
ret, x_t = cv2.threshold(x_t, 1, 255, cv2.THRESH_BINARY)
# 将图像处理成4通道
s_t = np.stack((x_t, x_t, x_t, x_t), axis=2)
# 保存和载入网络
saver = tf.train.Saver()
sess.run(tf.initialize_all_variables())
checkpoint = tf.train.get_checkpoint_state("saved_networks")
if checkpoint and checkpoint.model_checkpoint_path:
saver.restore(sess, checkpoint.model_checkpoint_path)
print("Successfully loaded:", checkpoint.model_checkpoint_path)
else:
print("Could not find old network weights")
# 开始训练
epsilon = INITIAL_EPSILON
t = 0
while "flappy bird" != "angry bird":
# choose an action epsilon greedily
# 将当前环境输入到CNN网络中
readout_t = readout.eval(feed_dict={s: [s_t]})[0]
a_t = np.zeros([ACTIONS])
action_index = 0
if t % FRAME_PER_ACTION == 0:
if random.random() <= epsilon:
print("----------Random Action----------")
action_index = random.randrange(ACTIONS)
a_t[random.randrange(ACTIONS)] = 1
else:
action_index = np.argmax(readout_t)
a_t[action_index] = 1
else:
a_t[0] = 1 # do nothing
# scale down epsilon
# 缩小 epsilon
if epsilon > FINAL_EPSILON and t > OBSERVE:
epsilon -= (INITIAL_EPSILON - FINAL_EPSILON) / EXPLORE
# 其次,执行选择的动作,并保存返回的状态、得分。
x_t1_colored, r_t, terminal = game_state.frame_step(a_t)
x_t1 = cv2.cvtColor(cv2.resize(x_t1_colored, (80, 80)), cv2.COLOR_BGR2GRAY)
ret, x_t1 = cv2.threshold(x_t1, 1, 255, cv2.THRESH_BINARY)
x_t1 = np.reshape(x_t1, (80, 80, 1))
s_t1 = np.append(x_t1, s_t[:, :, :3], axis=2)
# 经验池保存的是以一个马尔科夫序列于D中
D.append((s_t, a_t, r_t, s_t1, terminal))
# (s_t, a_t, r_t, s_t1, terminal)分别表示
# t时的状态s_t,
# 执行的动作a_t,
# 得到的反馈r_t,
# 得到的下一步的状态s_t1
# 游戏是否结束的标志terminal
# 如果经验池超过最大长度 则弹出最早的经验数据
if len(D) > REPLAY_MEMORY:
D.popleft()
# 过了一段时间之后,t 是计数器
if t > OBSERVE:
minibatch = random.sample(D, BATCH)
# 从经验池D中随机提取马尔科夫序列
s_j_batch = [d[0] for d in minibatch]
a_batch = [d[1] for d in minibatch]
r_batch = [d[2] for d in minibatch]
s_j1_batch = [d[3] for d in minibatch]
y_batch = []
readout_j1_batch = readout.eval(feed_dict={s: s_j1_batch})
for i in range(0, len(minibatch)):
terminal = minibatch[i][4]
if terminal:
y_batch.append(r_batch[i])
else:
y_batch.append(r_batch[i] + GAMMA * np.max(readout_j1_batch[i]))
train_step.run(feed_dict={
y: y_batch,
a: a_batch,
s: s_j_batch}
)
s_t = s_t1
t += 1
# save progress every 10000 iterations
if t % 10000 == 0:
saver.save(sess, 'saved_networks/' + GAME + '-dqn', global_step=t)
# print info
state = ""
if t <= OBSERVE:
state = "observe"
elif t > OBSERVE and t <= OBSERVE + EXPLORE:
state = "explore"
else:
state = "train"
print("TIMESTEP", t, "/ STATE", state, \
"/ EPSILON", epsilon, "/ ACTION", action_index, "/ REWARD", r_t, \
"/ Q_MAX %e" % np.max(readout_t))
# write info to files
'''
if t % 10000 <= 100:
a_file.write(",".join([str(x) for x in readout_t]) + '\n')
h_file.write(",".join([str(x) for x in h_fc1.eval(feed_dict={s:[s_t]})[0]]) + '\n')
cv2.imwrite("logs_tetris/frame" + str(t) + ".png", x_t1)
'''
def playGame():
sess = tf.InteractiveSession()
s, readout, h_fc1 = createNetwork()
trainNetwork(s, readout, h_fc1, sess)
def main():
playGame()
if __name__ == "__main__":
main()
网友评论