Abstract

Automatic detection and analysis of human activities captured by various sensors (e.g., sequences of images captured by RGB camera) play an essential role in various research fields in order to understand the semantic content of a captured scene. The main focus of the earlier studies has been widely on supervised classification problem, where a label is assigned to a given short clip. Nevertheless, in real-world scenarios, such as in Activities of Daily Living (ADL), the challenge is to automatically browse long-term (days and weeks) stream of videos to identify segments with semantics corresponding to the model activities and their temporal boundaries. This paper proposes an unsupervised solution to address this problem by generating hierarchical models that combine global trajectory information with local dynamics of the human body. Global information helps in modeling the spatiotemporal evolution of long-term activities, hence, their spatial and temporal localization. Moreover, the local dynamic information incorporates complex local motion patterns of daily activities into the models. Our proposed method is evaluated using realistic datasets captured from observation rooms in hospitals and nursing homes. The experimental data on a variety of monitoring scenarios in hospital settings reveals how this framework can be exploited to provide timely diagnose and medical interventions for cognitive disorders, such as Alzheimer’s disease. The obtained results show that our framework is a promising attempt capable of generating activity models without any supervision.

Highlights

  • Activity detection has been considered as one of the major challenges in computer vision due to its utter importance in various applications including video perception, healthcare, surveillance, etc.For example, if a system could monitor human activities, it could prevent the elderly from missing their medication doses by learning their habitual patterns and daily routines

  • In the case of the GAADRD dataset, the best result achieved with incorporated Motion Boundaries Histogram in Y axis (MBHY) descriptor in the activity models with codebook size set to 256

  • An online unsupervised framework is proposed for detection of daily living activities, for elderly monitoring

Read more

Summary

Introduction

Activity detection has been considered as one of the major challenges in computer vision due to its utter importance in various applications including video perception, healthcare, surveillance, etc.For example, if a system could monitor human activities, it could prevent the elderly from missing their medication doses by learning their habitual patterns and daily routines. Activity detection has been considered as one of the major challenges in computer vision due to its utter importance in various applications including video perception, healthcare, surveillance, etc. Unlike regular activities that usually occur in a closely controlled background (e.g., playing soccer), Activities of Daily Living (ADL) usually happen in uncontrolled and disarranged household or office environments, where the background is not a strong cue for recognition. ADLs are more challenging to detect and recognize, because of their unstructured and complex nature that create visually perplexing dynamics. Each person has his/her own ways to perform various daily tasks resulted in infinite variations of speed and style of performance which add extra complexity to detection and recognition tasks.

Objectives
Results
Discussion
Conclusion

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.