Multimodal sensor data fusion for in-situ classification of animal behavior using accelerometry and GNSS data
Reza Arablouei, Ziwei Wang, Greg J. Bishop-Hurley, Jiajun Liu

TL;DR
This study demonstrates that combining accelerometry and GNSS data improves animal behavior classification accuracy, especially for infrequent behaviors, using resource-efficient algorithms suitable for embedded systems.
Contribution
It introduces two novel multimodal fusion approaches for animal behavior classification and shows their effectiveness with real-world datasets.
Findings
Both fusion approaches outperform single-sensor methods.
Posterior probability fusion yields better accuracy and robustness.
Algorithms are suitable for embedded implementation.
Abstract
In this paper, we examine the use of data from multiple sensing modes, i.e., accelerometry and global navigation satellite system (GNSS), for classifying animal behavior. We extract three new features from the GNSS data, namely, distance from water point, median speed, and median estimated horizontal position error. We combine the information available from the accelerometry and GNSS data via two approaches. The first approach is based on concatenating the features extracted from both sensor data and feeding the concatenated feature vector into a multi-layer perceptron (MLP) classifier. The second approach is based on fusing the posterior probabilities predicted by two MLP classifiers. The input to each classifier is the features extracted from the data of one sensing mode. We evaluate the performance of the developed multimodal animal behavior classification algorithms using two…
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Taxonomy
TopicsWater Quality Monitoring Technologies · Indoor and Outdoor Localization Technologies · Advanced Chemical Sensor Technologies
