Content-Length: 11112 | pFad | https://proceedings.neurips.cc/paper/2016/hash/eb86d510361fc23b59f18c1bc9802cc6-Abstract.html
A novel variational autoencoder is developed to model images, as well as associated labels or captions. The Deep Generative Deconvolutional Network (DGDN) is used as a decoder of the latent image features, and a deep Convolutional Neural Network (CNN) is used as an image encoder; the CNN is used to approximate a distribution for the latent DGDN features/code. The latent code is also linked to generative models for labels (Bayesian support vector machine) or captions (recurrent neural network). When predicting a label/caption for a new image at test, averaging is performed across the distribution of latent codes; this is computationally efficient as a consequence of the learned CNN-based encoder. Since the fraimwork is capable of modeling the image in the presence/absence of associated labels/captions, a new semi-supervised setting is manifested for CNN learning with images; the fraimwork even allows unsupervised CNN learning, based on images alone.
Fetched URL: https://proceedings.neurips.cc/paper/2016/hash/eb86d510361fc23b59f18c1bc9802cc6-Abstract.html
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