Title :
Prediction of Human Activity by Discovering Temporal Sequence Patterns
Author :
Kang Li ; Yun Fu
Author_Institution :
Dept. of Electr. & Comput. Eng., Northeastern Univ., Boston, MA, USA
Abstract :
Early prediction of ongoing human activity has become more valuable in a large variety of time-critical applications. To build an effective representation for prediction, human activities can be characterized by a complex temporal composition of constituent simple actions and interacting objects. Different from early detection on short-duration simple actions, we propose a novel framework for long -duration complex activity prediction by discovering three key aspects of activity: Causality, Context-cue, and Predictability. The major contributions of our work include: (1) a general framework is proposed to systematically address the problem of complex activity prediction by mining temporal sequence patterns; (2) probabilistic suffix tree (PST) is introduced to model causal relationships between constituent actions, where both large and small order Markov dependencies between action units are captured; (3) the context-cue, especially interactive objects information, is modeled through sequential pattern mining (SPM), where a series of action and object co-occurrence are encoded as a complex symbolic sequence; (4) we also present a predictive accumulative function (PAF) to depict the predictability of each kind of activity. The effectiveness of our approach is evaluated on two experimental scenarios with two data sets for each: action-only prediction and context-aware prediction. Our method achieves superior performance for predicting global activity classes and local action units.
Keywords :
Markov processes; behavioural sciences computing; data mining; image motion analysis; image segmentation; object detection; trees (mathematics); Markov dependencies; PAF; PST; SPM; action-only prediction; causal relationships; causality aspect; context-aware prediction; context-cue aspect; human activity; long-duration complex activity prediction; pattern discovery; predictability aspect; predictive accumulative function; probabilistic suffix tree; sequential pattern mining; short-duration simple actions; symbolic sequence; temporal sequence patterns; time-critical applications; Context; Context modeling; Games; Hidden Markov models; Markov processes; Predictive models; Semantics; Activity prediction; causality; context-cue; predictability;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2013.2297321