Distributed Activity Recognition with Fuzzy-Enabled Wireless Sensor Networks [chapter]

Mihai Marin-Perianu, Clemens Lombriser, Oliver Amft, Paul Havinga, Gerhard Tröster
Distributed Computing in Sensor Systems  
Wireless sensor nodes can act as distributed detectors for recognizing activities online, with the final goal of assisting the users in their working environment. We propose an activity recognition architecture based on fuzzy logic, through which multiple nodes collaborate to produce a reliable recognition result from unreliable sensor data. As an extension to the regular fuzzy inference, we incorporate temporal order knowledge of the sequences of operations involved in the activities. The
more » ... rmance evaluation is based on experimental data from a car assembly trial. The system achieves an overall recognition performance of 0.81 recall and 0.79 precision with regular fuzzy inference, and 0.85 recall and 0.85 precision when considering temporal order knowledge. We also present early experiences with implementing the recognition system on sensor nodes. The results show that the algorithms can run online, with execution times in the order of 40ms, for the whole recognition chain, and memory overhead in the order of 1.5kB RAM. Related Work Activity recognition is a topic of high interest within the machine vision community. In particular, we can trace back the fundamental idea of dividing the recognition problem into multiple levels of complexity. In the "Inverse Hollywood Problem", Brand [4] uses coupled hidden Markov models (HMM) to visually detect causal events and fit them together into a coherent story of the ongoing action. Similarly, Ivanov and Bobick [7] address the recognition of visual activ-
doi:10.1007/978-3-540-69170-9_20 dblp:conf/dcoss/Marin-PerianuLAHT08 fatcat:xp3mbjj26ffitfn6cj37g6hvzm