2019 IEEE Aerospace Conference 2019
DOI: 10.1109/aero.2019.8741399
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Multi-Scale Geometric Summaries for Similarity-Based Sensor Fusion

Abstract: In this work, we address fusion of heterogeneous sensor data using wavelet-based summaries of fused self-similarity information from each sensor. The technique we develop is quite general, does not require domain specific knowledge or physical models, and requires no training. Nonetheless, it can perform surprisingly well at the general task of differentiating classes of time-ordered behavior sequences which are sensed by more than one modality. As a demonstration of our capabilities in the audio to video cont… Show more

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Cited by 2 publications
(1 citation statement)
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“…G zn . Any number of distance-graph-based upstream fusion techniques (e.g, similarity network fusion [25], [23] or joint manifold learning [7], [21]) could then be used to produce a fused weighed graph G f . The final step of LESS could then be applied to produce the fused event sequence.…”
Section: Towards Less As a Fusion Techniquementioning
confidence: 99%
“…G zn . Any number of distance-graph-based upstream fusion techniques (e.g, similarity network fusion [25], [23] or joint manifold learning [7], [21]) could then be used to produce a fused weighed graph G f . The final step of LESS could then be applied to produce the fused event sequence.…”
Section: Towards Less As a Fusion Techniquementioning
confidence: 99%