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Most Influential CVPR 2007 Paper · 2026-03 edition

Unsupervised Learning Of Invariant Feature Hierarchies With Applications To Object Recognition

M. Ranzato; F. J. Huang; Y. Boureau and Y. LeCun

Venue
IEEE Conference on Computer Vision and Pattern Recognition (CVPR) 2007
Recognition
Most Influential CVPR 2007 Paper (Rank No. 7)
Edition
2026-03
Impact factor
9
Certificate ID
43f7e11ba3ae238b

Abstract

We present an unsupervised method for learning a hierarchy of sparse feature detectors that are invariant to small shifts and distortions. The resulting feature extractor consists of multiple convolution filters, followed by a feature-pooling layer that computes the max of each filter output within adjacent windows, and a point-wise sigmoid non-linearity. A second level of larger and more invariant features is obtained by training the same algorithm on patches of features from the first level. Training a supervised classifier on these features yields 0.64% error on MNIST, and 54% average recognition rate on Caltech 101 with 30 training samples per category. While the resulting architecture is similar to convolutional networks, the layer-wise unsupervised training procedure alleviates the over-parameterization problems that plague purely supervised learning procedures, and yields good performance with very few labeled training samples.

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