Abstract:
This paper addresses learning and recognition of human behavior models from multimodal observation in a smart home environment. The proposed approach is part of a framewo...Show MoreMetadata
Abstract:
This paper addresses learning and recognition of human behavior models from multimodal observation in a smart home environment. The proposed approach is part of a framework for acquiring a high-level contextual model for human behavior in an augmented environment. A 3-D video tracking system creates and tracks entities (persons) in the scene. Further, a speech activity detector analyzes audio streams coming from head set microphones and determines for each entity, whether the entity speaks or not. An ambient sound detector detects noises in the environment. An individual role detector derives basic activity like ldquowalkingrdquo or ldquointeracting with tablerdquo from the extracted entity properties of the 3-D tracker. From the derived multimodal observations, different situations like ldquoaperitifrdquo or ldquopresentationrdquo are learned and detected using statistical models (HMMs). The objective of the proposed general framework is two-fold: the automatic offline analysis of human behavior recordings and the online detection of learned human behavior models. To evaluate the proposed approach, several multimodal recordings showing different situations have been conducted. The obtained results, in particular for offline analysis, are very good, showing that multimodality as well as multiperson observation generation are beneficial for situation recognition.
Published in: IEEE Transactions on Automation Science and Engineering ( Volume: 6, Issue: 4, October 2009)
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Human Model ,
- Human Behavior ,
- Behavioral Model ,
- Smart Home ,
- Models Of Human Behavior ,
- Human Activities ,
- Basal Activity ,
- Formation Of Groups ,
- Hidden Markov Model ,
- Tracking System ,
- Detection Model ,
- Action Recognition ,
- Individual Roles ,
- Environmental Noise ,
- Sound Detection ,
- 3D Video ,
- Video Tracking System ,
- Human Activity Recognition ,
- Ambient Noise Levels ,
- Smart Environment ,
- Speech Detection ,
- Status Of Entities ,
- Named Entity Recognition ,
- Support Vector Machine ,
- High-dimensional ,
- Multiple Cameras ,
- Microphone Array ,
- Part Of Process ,
- Fusion Algorithm ,
- Covariance Matrix
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Human Model ,
- Human Behavior ,
- Behavioral Model ,
- Smart Home ,
- Models Of Human Behavior ,
- Human Activities ,
- Basal Activity ,
- Formation Of Groups ,
- Hidden Markov Model ,
- Tracking System ,
- Detection Model ,
- Action Recognition ,
- Individual Roles ,
- Environmental Noise ,
- Sound Detection ,
- 3D Video ,
- Video Tracking System ,
- Human Activity Recognition ,
- Ambient Noise Levels ,
- Smart Environment ,
- Speech Detection ,
- Status Of Entities ,
- Named Entity Recognition ,
- Support Vector Machine ,
- High-dimensional ,
- Multiple Cameras ,
- Microphone Array ,
- Part Of Process ,
- Fusion Algorithm ,
- Covariance Matrix
- Author Keywords