Ejemplo n.º 1
0
def test10RandomImgs():
    # 读取测试集结果
    dl = DataLoader('MNIST', './datasets/MNIST/')
    test_images, test_labels = dl.Load('test')
    # 生成10个连续的随机数
    idx = np.random.randint(0, test_images.shape[0] - 10)
    random_image = test_images[idx:idx + 10, :]
    # testlabel = nn.test(random_image.T)

    MNIST_test = NN()
    MNIST_test.loadParams()
    out = MNIST_test.forward(random_image.T - 33.318421, 'test')

    exp_out = np.exp(out)
    softmax_out = exp_out / np.sum(exp_out, axis=0)
    # 找到最大值索引,作为分类结果
    cls_res = np.argmax(softmax_out, axis=0)

    # 显示图像
    for i in range(0, 10):
        plt.subplot(2, 5, i + 1)
        plt.title('分类: %d' % cls_res[i])
        # 关闭坐标刻度
        plt.xticks([])
        plt.yticks([])
        plt.imshow(np.reshape(random_image[i], [28, 28]), cmap='gray')

    plt.show()
Ejemplo n.º 2
0
model_path = './model/mnist_mlp_epoch9.model'

# Construct nn
MLP = NN()
MLP.add(SimpleBatchNorm(name="data_batchnorm", istraining=False))
MLP.add(Fullyconnected(784, 512, name="fc1"))
MLP.add(Relu(name="fc1_relu"))
MLP.add(SimpleBatchNorm(name='fc1_batchnorm'))
MLP.add(Fullyconnected(512, 512, name="fc2"))
MLP.add(Relu(name="fc2_relu"))
MLP.add(Fullyconnected(512, 10, name="fc3"))

# Load model
MLP.load_model(model_path)

for parent, dirnames, filenames in os.walk(img_dir):
    for filename in filenames:
        if filename.endswith("jpg") or filename.endswith("png"):
            img_path = os.path.join(parent, filename)
            pil_img = Image.open(img_path).convert('L')
            pil_img = pil_img.resize((28, 28), Image.ANTIALIAS)
            img = np.array(pil_img)
            out_data = MLP.forward(img.reshape((1, 784)))
            # Softmax
            probs = np.exp(out_data -
                           out_data.max(axis=1).reshape((out_data.shape[0],
                                                         1)))
            probs /= probs.sum(axis=1).reshape((out_data.shape[0], 1))
            print img_path, 'predict:', np.argmax(probs)
Ejemplo n.º 3
0
MLP.add(Fullyconnected(512, 512, name="fc2"))
MLP.add(Relu(name="fc2_relu"))
MLP.add(Fullyconnected(512, 10, name="fc3"))

# Load model
MLP.load_model(model_path)

# Load mnist data
mnist = mnist(path="./data/", batch_size=1, test=True)
num_imgs = mnist.get_num()

pos = 0
total_time = 0
for i in range(num_imgs):
    img, label = mnist.get_batch()

    t1 = time.time()
    out_data = MLP.forward(img)
    t2 = time.time()

    # Softmax
    probs = np.exp(out_data -
                   out_data.max(axis=1).reshape((out_data.shape[0], 1)))
    probs /= probs.sum(axis=1).reshape((out_data.shape[0], 1))

    pos += np.sum(label == probs.argmax(axis=1))
    print "test img%d, time:%.5f" % (i, t2 - t1)
    total_time += t2 - t1

print "acc:", pos / float(num_imgs)
print "average time:", total_time / float(num_imgs)