tensorflow LookupError:没有为操作类型定义渐变:ResizeNearestNeighborGrad

aiazj4mn  于 12个月前  发布在  其他
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我试图将Wasserstein gradient penalty添加到损失计算中。如果不添加此惩罚,一切正常。但当添加此部分时,它会给出类似于以下内容的错误:

File "/usr/local/lib/python2.7/dist-packages/tensorflow/python/ops/gradients_impl.py", line 737, in _GradientsHelper
        (op.name, op.type))
      LookupError: No gradient defined for operation 'gradients/discriminator/decoder/ResizeNearestNeighbor_grad/ResizeNearestNeighborGrad' (op type: ResizeNearestNeighborGrad)

以下是用于计算Wasserstein梯度惩罚的源代码部分:

differences = tf.subtract(images_fake, images_real)
    alpha_shape = [params.batch_size] + [1] * (differences.shape.ndims - 1)
    alpha = tf.random_uniform(shape=alpha_shape, minval=0., maxval=1.)
    interpolates = images_real + (alpha * differences)
    d_model = Model(params, args.mode, interpolates, reuse_variables, images_fake, 1)
    gradients = tf.gradients(d_model.logistic_linear, [interpolates])[0]
    slopes = tf.sqrt(tf.reduce_sum(tf.square(gradients), reduction_indices=[1]))
    gradient_penalty = tf.reduce_mean((slopes - 1.) ** 2)
    _gradient_penalty = 10 * gradient_penalty

但它抛出上述错误时,下面的行是bening执行。

d_optim = opt_discriminator_step.minimize(total_loss_discriminator, var_list=d_vars)

尽管如此,我还是不知道如何处理这个问题。欢迎任何评论或回答。

5q4ezhmt

5q4ezhmt1#

尝试使用tf.keras.layers.AveragePooling2D。它可以执行相同的操作,只需确保正确设置参数

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