Adaptive deconvolutional networks for mid and high level feature learning

Matthew D. Zeiler, Graham W. Taylor, R. Fergus
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引用次数: 1182

Abstract

We present a hierarchical model that learns image decompositions via alternating layers of convolutional sparse coding and max pooling. When trained on natural images, the layers of our model capture image information in a variety of forms: low-level edges, mid-level edge junctions, high-level object parts and complete objects. To build our model we rely on a novel inference scheme that ensures each layer reconstructs the input, rather than just the output of the layer directly beneath, as is common with existing hierarchical approaches. This makes it possible to learn multiple layers of representation and we show models with 4 layers, trained on images from the Caltech-101 and 256 datasets. When combined with a standard classifier, features extracted from these models outperform SIFT, as well as representations from other feature learning methods.
用于中高级特征学习的自适应反卷积网络
我们提出了一个分层模型,该模型通过卷积稀疏编码和最大池化交替层来学习图像分解。当在自然图像上训练时,我们模型的层以各种形式捕获图像信息:低级边缘,中级边缘连接,高级对象部分和完整对象。为了构建我们的模型,我们依赖于一种新的推理方案,该方案确保每一层重建输入,而不仅仅是直接在下一层的输出,就像现有的分层方法一样。这使得学习多层表示成为可能,我们展示了4层的模型,这些模型是在来自Caltech-101和256数据集的图像上训练的。当与标准分类器结合使用时,从这些模型中提取的特征优于SIFT,也优于其他特征学习方法的表示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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