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arxiv: 2412.19404 · v1 · pith:QAHISQJG · submitted 2024-12-27 · eess.SP · cs.CV· cs.LG

Spectral-Temporal Fusion Representation for Person-in-Bed Detection

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classification eess.SP cs.CVcs.LG
keywords detectionchallengemethodperson-in-bedplacerepresentationspectral-temporaltracks
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This study is based on the ICASSP 2025 Signal Processing Grand Challenge's Accelerometer-Based Person-in-Bed Detection Challenge, which aims to determine bed occupancy using accelerometer signals. The task is divided into two tracks: "in bed" and "not in bed" segmented detection, and streaming detection, facing challenges such as individual differences, posture variations, and external disturbances. We propose a spectral-temporal fusion-based feature representation method with mixup data augmentation, and adopt Intersection over Union (IoU) loss to optimize detection accuracy. In the two tracks, our method achieved outstanding results of 100.00% and 95.55% in detection scores, securing first place and third place, respectively.

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