Abstract

Passive infrared (PIR) motion detectors, which can support long-term continuous observation, are widely used for human motion analysis. Extracting all possible trajectories from the PIR sensor networks is important. Because the PIR sensor does not log location and individual information, none of the existing methods can generate all possible human motion trajectories that satisfy various spatio-temporal constraints from the sensor activation log data. In this paper, a geometric algebra (GA)-based approach is developed to generate all possible human trajectories from the PIR sensor network data. Firstly, the representation of the geographical network, sensor activation response sequences and the human motion are represented as algebraic elements using GA. The human motion status of each sensor activation are labeled using the GA-based trajectory tracking. Then, a matrix multiplication approach is developed to dynamically generate the human trajectories according to the sensor activation log and the spatio-temporal constraints. The method is tested with the MERL motion database. Experiments show that our method can flexibly extract the major statistical pattern of the human motion. Compared with direct statistical analysis and tracklet graph method, our method can effectively extract all possible trajectories of the human motion, which makes it more accurate. Our method is also likely to provides a new way to filter other passive sensor log data in sensor networks.

Highlights

  • Long-term accurate human motion trajectory analysis is becoming more and more important for indoor navigation [1], smart homes [2], behavior science [3], architectural design for buildings [4] and evacuation [5], etc

  • The people tracking problem can be formulated as how to generate all the possible trajectory with several different spatio-temporal constraints according to the sensor activation log

  • Since the people are walking in the geographical space time, the observation feature vector series should be constrained by several spatio-temporal constraints tCu

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Summary

Introduction

Long-term accurate human motion trajectory analysis is becoming more and more important for indoor navigation [1], smart homes [2], behavior science [3], architectural design for buildings [4] and evacuation [5], etc. The statistical behavior pattern can be extracted from the PIR sensor network log data [8] Technologies such as tracklet graph models were developed to support the dynamic query and visualization of the possible human motion patterns in the spatio-temporal domain [20]. Since not all the possible human motion trajectories are completely known as the full set, the accuracy of the statistical models may be problematic From this perspective, generations of all the possible human trajectory patterns from the sensor log data are important for the sensor data analysis. In the generation-refinement paradigm, all the possible human motion trajectories can be firstly generated and dynamically refined according to the spatio-temporal constraints and sensor activation logs. The people tracking problem can be formulated as how to generate all the possible trajectory with several different spatio-temporal constraints according to the sensor activation log.

GA and GA Representation of PIR Sensor Networks
Definition
The Problems of Trajectory
Basic Ideas
Classification of Sensor Status According to the Trajectory
The Generation of All Possible Trajectories
Possible Trajectories Generation and Refinement Algorithm
Case Studies
Discussion and Conclusions
Full Text
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