Uncertainty Inspired RGB-D Saliency Detectio
Loading...
Date
Authors
Zhang, Jing
Fan, Deng-Ping
Dai, Yuchao
Anwar, Saeed
Saleh, Fatemehsadat
Sadegh Ali Akbarian, Mohammad
Barnes, Nick
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Electrical and Electronics Engineers (IEEE Inc)
Abstract
We propose the first stochastic framework to employ uncertainty for RGB-D saliency detection by learning from the data labeling process. Existing RGB-D saliency detection models treat this task as a point estimation problem by predicting a single saliency map following a deterministic learning pipeline. We argue that, however, the deterministic solution is relatively ill-posed. Inspired by the saliency data labeling process, we propose a generative architecture to achieve probabilistic RGB-D saliency detection which utilizes a latent variable to model the labeling variations. Our framework includes two main models: 1) a generator model, which maps the input image and latent variable to stochastic saliency prediction, and 2) an inference model, which gradually updates the latent variable by sampling it from the true or approximate posterior distribution. The generator model is an encoder-decoder saliency network. To infer the latent variable, we introduce two different solutions: i) a Conditional Variational Auto-encoder with an extra encoder to approximate the posterior distribution of the latent variable; and ii) an Alternating Back-Propagation technique, which directly samples the latent variable from the true posterior distribution. Qualitative and quantitative results on six challenging RGB-D benchmark datasets show our approach's superior performance in learning the distribution of saliency maps.
Description
Citation
Collections
Source
IEEE Transactions on Pattern Analysis and Machine Intelligence
Type
Book Title
Entity type
Access Statement
License Rights
Restricted until
2099-12-31
Downloads
File
Description