Published December 2015 | Version public
Book Section - Chapter

Actions and Attributes from Wholes and Parts

Abstract

We investigate the importance of parts for the tasks of action and attribute classification. We develop a part-based approach by leveraging convolutional network features inspired by recent advances in computer vision. Our part detectors are a deep version of poselets and capture parts of the human body under a distinct set of poses. For the tasks of action and attribute classification, we train holistic convolutional neural networks and show that adding parts leads to top-performing results for both tasks. We observe that for deeper networks parts are less significant. In addition, we demonstrate the effectiveness of our approach when we replace an oracle person detector, as is the default in the current evaluation protocol for both tasks, with a state-of-the-art person detection system.

Additional Information

This work was supported by the Intel Visual Computing Center and the ONR SMARTS MURI N000140911051. The GPUs used in this research were generously donated by the NVIDIA Corporation.

Additional details

Identifiers

Eprint ID
118367
Resolver ID
CaltechAUTHORS:20221215-789725000.5

Funding

Intel Visual Computing Center
Office of Naval Research (ONR)
N000140911051
NVIDIA Corporation

Dates

Created
2022-12-20
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Updated
2022-12-20
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