Learning dynamic hierarchical models for anytime scene labeling

Date

Authors

Liu, Buyu
He, Xuming

Journal Title

Journal ISSN

Volume Title

Publisher

Springer Verlag

Access Statement

Research Projects

Organizational Units

Journal Issue

Abstract

With increasing demand for efficient image and video analysis, test-time cost of scene parsing becomes critical for many large-scale or time-sensitive vision applications. We propose a dynamic hierarchical model for anytime scene labeling that allows us to achieve flexible tradeoffs between efficiency and accuracy in pixel-level prediction. In particular, our approach incorporates the cost of feature computation and model inference, and optimizes the model performance for any given test-time budget by learning a sequence of image-adaptive hierarchical models. We formulate this anytime representation learning as a Markov Decision Process with a discrete-continuous state-action space. A high-quality policy of feature and model selection is learned based on an approximate policy iteration method with action proposal mechanism. We demonstrate the advantages of our dynamic non-myopic anytime scene parsing on three semantic segmentation datasets, which achieves 90% of the state-of-the-art performances by using 15% of their overall costs.

Description

Keywords

Citation

Source

Book Title

Computer Vision - 14th European Conference, ECCV 2016, Proceedings

Entity type

Publication

Access Statement

License Rights

Restricted until