DocumentCode :
3672525
Title :
Picture: A probabilistic programming language for scene perception
Author :
Tejas D Kulkarni;Pushmeet Kohli;Joshua B Tenenbaum;Vikash Mansinghka
Author_Institution :
MIT, Cambridge, 02139, United States
fYear :
2015
fDate :
6/1/2015 12:00:00 AM
Firstpage :
4390
Lastpage :
4399
Abstract :
Recent progress on probabilistic modeling and statistical learning, coupled with the availability of large training datasets, has led to remarkable progress in computer vision. Generative probabilistic models, or “analysis-by-synthesis” approaches, can capture rich scene structure but have been less widely applied than their discriminative counterparts, as they often require considerable problem-specific engineering in modeling and inference, and inference is typically seen as requiring slow, hypothesize-and-test Monte Carlo methods. Here we present Picture, a probabilistic programming language for scene understanding that allows researchers to express complex generative vision models, while automatically solving them using fast general-purpose inference machinery. Picture provides a stochastic scene language that can express generative models for arbitrary 2D/3D scenes, as well as a hierarchy of representation layers for comparing scene hypotheses with observed images by matching not simply pixels, but also more abstract features (e.g., contours, deep neural network activations). Inference can flexibly integrate advanced Monte Carlo strategies with fast bottom-up data-driven methods. Thus both representations and inference strategies can build directly on progress in discriminatively trained systems to make generative vision more robust and efficient. We use Picture to write programs for 3D face analysis, 3D human pose estimation, and 3D object reconstruction - each competitive with specially engineered baselines.
Keywords :
"Probabilistic logic","Proposals","Shape","Cameras","Analytical models","Rendering (computer graphics)","Nose"
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2015 IEEE Conference on
Electronic_ISBN :
1063-6919
Type :
conf
DOI :
10.1109/CVPR.2015.7299068
Filename :
7299068
Link To Document :
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