Published 2014 | Version public
Book Section - Chapter

Detecting Social Actions of Fruit Flies

Abstract

We describe a system that tracks pairs of fruit flies and automatically detects and classifies their actions. We compare experimentally the value of a frame-level feature representation with the more elaborate notion of 'bout features' that capture the structure within actions. Similarly, we compare a simple sliding window classifier architecture with a more sophisticated structured output architecture, and find that window based detectors outperform the much slower structured counterparts, and approach human performance. In addition we test our top performing detector on the CRIM13 mouse dataset, finding that it matches the performance of the best published method. Our Fly-vs-Fly dataset contains 22 hours of video showing pairs of fruit flies engaging in 10 social interactions in three different contexts; it is fully annotated by experts, and published with articulated pose trajectory features.

Additional Information

© 2014 Springer. This work was supported by the ONR MURI N00014-10-l-0933 and the Gordon and Betty Moore Foundation.

Additional details

Identifiers

Eprint ID
53610
Resolver ID
CaltechAUTHORS:20150113-085834106

Funding

Office of Naval Research (ONR)
N00014-10-1-0933
Gordon and Betty Moore Foundation

Dates

Created
2015-01-13
Created from EPrint's datestamp field
Updated
2021-11-10
Created from EPrint's last_modified field

Caltech Custom Metadata

Series Name
Lecture Notes in Computer Science
Series Volume or Issue Number
8690