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Extracting Invariant Features From Images Using An Equivariant Autoencoder

机译:使用等效的autoEncoder从图像中提取不变的功能

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Convolutional Neural Networks achieve state of the art results in many image recognition tasks. While their structure makes predictions invariant to small translations, some recognition tasks require invariance to other transformations, like rotation and reflection. We apply group convolutions to build an Equivariant Autoencoder with embeddings that change predictably under the specified set of transformations. We then introduce two approaches to extracting invariant features from these embeddings—Gram Pooling and Equivariant Attention. These two methods separate transformation-relevant information from all other image features. We use obtained embeddings in classification and clustering tasks and show an improvement of the classification quality on the learned embeddings compared to pure autoencoder and average pooling method. A visualization of the learned manifold shows that objects of the same class tend to cluster together, which was not observed for the pure autoencoder embeddings.
机译:卷积神经网络实现最先进的态度,导致许多图像识别任务。虽然它们的结构使预测不变于较小的翻译,但一些识别任务需要不变的其他转换,如旋转和反射。我们应用组卷积来构建具有嵌入式的embeddings的等级AutoEncoder,这些嵌入式可预测可预测的可预测的转换。然后,我们介绍了两种方法,可以从这些嵌入式丛中提取不变的功能,并强烈地注意。这两种方法将转换相关信息与所有其他图像特征分开。我们在分类和聚类任务中使用获得的嵌入式,并与纯AutoEncoder和平均池方法相比,在学习嵌入的嵌入上显示了对分类质量的提高。学习歧管的可视化表明,同一类别的对象倾向于聚集在一起,这对于纯AutoEncoder嵌入而言未观察到。

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