Title :
Recognition of Complex Events: Exploiting Temporal Dynamics between Underlying Concepts
Author :
Bhattacharya, Surya ; Kalayeh, M.M. ; Sukthankar, Rahul ; Shah, Mubarak
Author_Institution :
Columbia Univ., New York, NY, USA
Abstract :
While approaches based on bags of features excel at low-level action classification, they are ill-suited for recognizing complex events in video, where concept-based temporal representations currently dominate. This paper proposes a novel representation that captures the temporal dynamics of windowed mid-level concept detectors in order to improve complex event recognition. We first express each video as an ordered vector time series, where each time step consists of the vector formed from the concatenated confidences of the pre-trained concept detectors. We hypothesize that the dynamics of time series for different instances from the same event class, as captured by simple linear dynamical system (LDS) models, are likely to be similar even if the instances differ in terms of low-level visual features. We propose a two-part representation composed of fusing: (1) a singular value decomposition of block Hankel matrices (SSID-S) and (2) a harmonic signature (HS) computed from the corresponding eigen-dynamics matrix. The proposed method offers several benefits over alternate approaches: our approach is straightforward to implement, directly employs existing concept detectors and can be plugged into linear classification frameworks. Results on standard datasets such as NIST´s TRECVID Multimedia Event Detection task demonstrate the improved accuracy of the proposed method.
Keywords :
Hankel matrices; image capture; image classification; image representation; singular value decomposition; time series; video signal processing; LDS model; NIST´s TRECVID multimedia event detection; SSID-S; block Hankel matrices; complex event recognition; concatenated confidences; concept-based temporal representation; eigen-dynamics matrix; harmonic signature; linear classification frameworks; linear dynamical system models; low-level visual features; ordered vector time series; pretrained concept detectors; singular value decomposition; temporal dynamics; windowed mid-level concept detectors; Detectors; Matrix decomposition; Time series analysis; Tires; Vectors; Vehicle dynamics; Vehicles; Complex Event Recognition; Hankel Matrices; Harmonic signatures; Linear Dynamical Systems; Subspace state identification; TRECVID MED; Temporal Representation;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.287