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Main Authors: Shi, Yingtian, Balasubramanian, Abivishaq, Herring, Jessica, Li, Jiachen, Romero, Juan Macias, Gonzalez, Rosemarie Santa, Mishra, Varun, Rozga, Agata, Tan, Xiang Zhi, Plötz, Thomas
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.02841
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author Shi, Yingtian
Balasubramanian, Abivishaq
Herring, Jessica
Li, Jiachen
Romero, Juan Macias
Gonzalez, Rosemarie Santa
Mishra, Varun
Rozga, Agata
Tan, Xiang Zhi
Plötz, Thomas
author_facet Shi, Yingtian
Balasubramanian, Abivishaq
Herring, Jessica
Li, Jiachen
Romero, Juan Macias
Gonzalez, Rosemarie Santa
Mishra, Varun
Rozga, Agata
Tan, Xiang Zhi
Plötz, Thomas
contents Human activity recognition (HAR) in smart homes remains challenging because many daily activities exhibit similar local sensor patterns, while minimally intrusive sensing provides sparse and ambiguous observations. As a result, methods based on short temporal or event windows often fail to capture the broader temporal and behavioral context needed for reliable activity understanding. We present TRACE (Temporal Reasoning over Context and Evidence), a contextual activity recognition framework for smart homes that integrates multi-source sensor evidence with user-specific contextual priors to improve activity interpretation. Rather than treating recognition as a local classification problem, TRACE leverages contextual reasoning to resolve ambiguities, reduce fragmented predictions, and infer more semantically specific activities. We evaluate TRACE on public benchmarks and in a deployment study conducted in our smart-home environment. Results show that TRACE improves recognition accuracy for semantically complex activities, produces more temporally coherent predictions that better align with user-specific routines, and maintains robust performance under cross-domain transfer and missing-modality conditions. These findings demonstrate the value of contextual reasoning for advancing smart-home HAR.
format Preprint
id arxiv_https___arxiv_org_abs_2605_02841
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle TRACE: Temporal Reasoning over Context and Evidence for Activity Recognition in Smart Homes
Shi, Yingtian
Balasubramanian, Abivishaq
Herring, Jessica
Li, Jiachen
Romero, Juan Macias
Gonzalez, Rosemarie Santa
Mishra, Varun
Rozga, Agata
Tan, Xiang Zhi
Plötz, Thomas
Human-Computer Interaction
Human activity recognition (HAR) in smart homes remains challenging because many daily activities exhibit similar local sensor patterns, while minimally intrusive sensing provides sparse and ambiguous observations. As a result, methods based on short temporal or event windows often fail to capture the broader temporal and behavioral context needed for reliable activity understanding. We present TRACE (Temporal Reasoning over Context and Evidence), a contextual activity recognition framework for smart homes that integrates multi-source sensor evidence with user-specific contextual priors to improve activity interpretation. Rather than treating recognition as a local classification problem, TRACE leverages contextual reasoning to resolve ambiguities, reduce fragmented predictions, and infer more semantically specific activities. We evaluate TRACE on public benchmarks and in a deployment study conducted in our smart-home environment. Results show that TRACE improves recognition accuracy for semantically complex activities, produces more temporally coherent predictions that better align with user-specific routines, and maintains robust performance under cross-domain transfer and missing-modality conditions. These findings demonstrate the value of contextual reasoning for advancing smart-home HAR.
title TRACE: Temporal Reasoning over Context and Evidence for Activity Recognition in Smart Homes
topic Human-Computer Interaction
url https://arxiv.org/abs/2605.02841