tensorflow随笔-tf.nn.conv2d卷积运算(10)

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运动模糊

#!/usr/bin/env python2
# -*- coding: utf-8 -*-
"""
Created on Tue Oct  2 13:23:27 2018

@author: myhaspl
@email:[email protected]
tf.nn.conv2d处理图像
运动模糊
"""

import tensorflow as tf
from PIL import Image    
import numpy as np




g=tf.Graph()

with g.as_default():

    def getImageData(fileNameList):
        imageData=[]
        for fn in fileNameList:        
            testImage = Image.open(fn).convert('L')   
            testImage.show() 
            imageData.append(np.array(testImage)[:,:,None])
        return np.array(imageData,dtype=np.float32)

    imageFn=("dog.png",)
    imageData=getImageData(imageFn)
    testData=tf.constant(imageData)
    kernel=tf.constant(np.array(
            [
                   [[[1.]],[[0.]],[[0.]]],
                   [[[0.]],[[1.]],[[0.]]], 
                   [[[0.]],[[0.]],[[1.]]]
            ])/3.
            ,dtype=tf.float32)#3*3*1*1
    y=tf.cast(tf.nn.conv2d(testData,kernel,strides=[1,1,1,1],padding="SAME"), dtype=tf.int32)
    init_op = tf.global_variables_initializer()
with tf.Session(graph=g) as sess:
    print testData.get_shape()
    print kernel.get_shape()
    resultData=sess.run(y)[0]
    resultData=resultData.reshape(resultData.shape[0],resultData.shape[1])
    resulImage=Image.fromarray(np.uint8(resultData),mode='L')   
    resulImage.show()
    print y.get_shape()

在这里插入图片描述

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转载自blog.csdn.net/u010255642/article/details/83118563