示例#1
0
    def pbtGetMnist_Callback(self):
        self.clearDataArea()

        # 随机抽取一张测试集图片,放大后显示
        img = x_test[np.random.randint(0, 9999)]  # shape:[1,28,28]
        img = img.reshape(28, 28)  # shape:[28,28]

        img = img * 0xff  # 恢复灰度值大小
        pil_img = Image.fromarray(np.uint8(img))
        pil_img = pil_img.resize((224, 224))  # 图像放大显示

        # 将pil图像转换成qimage类型
        qimage = Image.ImageQt(pil_img)

        # 将qimage类型图像显示在label
        pix = QPixmap.fromImage(qimage)
        self.lbDataArea.setPixmap(pix)
示例#2
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    def pbtPredict_Callback(self):
        __img, img_array = [], [
        ]  # 将图像统一从qimage->pil image -> np.array [1, 1, 28, 28]

        # 获取qimage格式图像
        if self.mode == MODE_MNIST:
            __img = self.lbDataArea.pixmap()  # label内若无图像返回None
            if __img == None:  # 无图像则用纯黑代替
                # __img = QImage(224, 224, QImage.Format_Grayscale8)
                __img = Image.ImageQt(
                    Image.fromarray(np.uint8(np.zeros([224, 224]))))
            else:
                __img = __img.toImage()
        elif self.mode == MODE_WRITE:
            __img = self.paintBoard.getContentAsQImage()

        # 转换成pil image类型处理
        pil_img = Image.fromqimage(__img)
        pil_img = pil_img.resize((28, 28), Image.ANTIALIAS)

        # pil_img.save('test.png')

        img_array = np.array(pil_img.convert('L')).reshape(1, 1, 28,
                                                           28) / 255.0
        # img_array = np.where(img_array>0.5, 1, 0)

        # reshape成网络输入类型
        __result = network.predict(img_array)  # shape:[1, 10]

        # print (__result)

        # 将预测结果使用softmax输出
        __result = softmax(__result)

        self.result[0] = np.argmax(__result)  # 预测的数字
        self.result[1] = __result[0, self.result[0]]  # 置信度

        self.lbResult.setText("%d" % (self.result[0]))
        self.lbCofidence.setText("%.8f" % (self.result[1]))