PADS: A Probabilistic Activity Detection Framework for Video Data

TitlePADS: A Probabilistic Activity Detection Framework for Video Data
Publication TypeJournal Articles
Year of Publication2010
AuthorsAlbanese M, Chellappa R, Cuntoor N, Moscato V, Picariello A, V.S. Subrahmanian, Udrea O
JournalPattern Analysis and Machine Intelligence, IEEE Transactions on
Volume32
Issue12
Pagination2246 - 2261
Date Published2010/12//
ISBN Number0162-8828
KeywordsAutomated;Programming Languages;Video Recording;, Computer-Assisted;Models, PADL;PADS;image processing algorithms;offPad algorithm;onPad algorithm;probabilistic activity description language;probabilistic activity detection framework;video data;video sequence;image sequences;object detection;probability;video surveillance;Algorit, Statistical;Movement;Pattern Recognition
Abstract

There is now a growing need to identify various kinds of activities that occur in videos. In this paper, we first present a logical language called Probabilistic Activity Description Language (PADL) in which users can specify activities of interest. We then develop a probabilistic framework which assigns to any subvideo of a given video sequence a probability that the subvideo contains the given activity, and we finally develop two fast algorithms to detect activities within this framework. OffPad finds all minimal segments of a video that contain a given activity with a probability exceeding a given threshold. In contrast, the OnPad algorithm examines a video during playout (rather than afterwards as OffPad does) and computes the probability that a given activity is occurring (even if the activity is only partially complete). Our prototype Probabilistic Activity Detection System (PADS) implements the framework and the two algorithms, building on top of existing image processing algorithms. We have conducted detailed experiments and compared our approach to four different approaches presented in the literature. We show that-for complex activity definitions-our approach outperforms all the other approaches.

DOI10.1109/TPAMI.2010.33