Building high-level features using large scale unsupervised learning

QV Le - 2013 IEEE international conference on acoustics …, 2013 - ieeexplore.ieee.org
2013 IEEE international conference on acoustics, speech and signal …, 2013ieeexplore.ieee.org
We consider the problem of building high-level, class-specific feature detectors from only
unlabeled data. For example, is it possible to learn a face detector using only unlabeled
images? To answer this, we train a deep sparse autoencoder on a large dataset of images
(the model has 1 billion connections, the dataset has 10 million 200× 200 pixel images
downloaded from the Internet). We train this network using model parallelism and
asynchronous SGD on a cluster with 1,000 machines (16,000 cores) for three days. Contrary …
We consider the problem of building high-level, class-specific feature detectors from only unlabeled data. For example, is it possible to learn a face detector using only unlabeled images? To answer this, we train a deep sparse autoencoder on a large dataset of images (the model has 1 billion connections, the dataset has 10 million 200×200 pixel images downloaded from the Internet). We train this network using model parallelism and asynchronous SGD on a cluster with 1,000 machines (16,000 cores) for three days. Contrary to what appears to be a widely-held intuition, our experimental results reveal that it is possible to train a face detector without having to label images as containing a face or not. Control experiments show that this feature detector is robust not only to translation but also to scaling and out-of-plane rotation. We also find that the same network is sensitive to other high-level concepts such as cat faces and human bodies. Starting from these learned features, we trained our network to recognize 22,000 object categories from ImageNet and achieve a leap of 70% relative improvement over the previous state-of-the-art.
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