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The human nervous system handles vast amounts of information by translating sensory stimuli into neural impulses, which the brain processes, creating thoughts expressed through language or stored as memories. The brain also synthesizes information from emotions and memories, which significantly influence thoughts and behaviors. This intricate process creates a comprehensive mental picture.
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Updated: Jun 29, 2025

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X-CHAR: A Concept-based Explainable Complex Human Activity Recognition Model.

Jeya Vikranth Jeyakumar1, Ankur Sarker1, Luis Antonio Garcia2

  • 1University of California Los Angeles, USA.

Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
|March 26, 2024
PubMed
Summary
This summary is machine-generated.

X-CHAR provides explainable human activity recognition (HAR) without needing precise low-level activity annotations. This deep learning model generates understandable concept sequences and counterfactuals, reducing expert workload and improving trust in safety-critical applications.

Keywords:
Activity recognitionExplainable AIInterpretabilityNeural networks

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Area of Science:

  • Computer Science
  • Artificial Intelligence
  • Machine Learning

Background:

  • Deep learning models for human activity recognition (HAR) are crucial for safety-critical applications but often lack interpretability.
  • Existing methods for explainable HAR require extensive, precise low-level activity annotations, increasing expert workload and error potential.
  • Bridging the gap between high-performance deep learning and trustworthy, interpretable HAR remains a significant challenge.

Purpose of the Study:

  • Introduce X-CHAR, an eXplainable Complex Human Activity Recognition model.
  • Develop a deep learning approach for HAR that provides human-understandable explanations without precise low-level activity annotations.
  • Reduce the burden on domain experts while maintaining robust prediction accuracy.

Main Methods:

  • X-CHAR models complex activities as sequences of high-level concepts.
  • Utilizes Connectionist Temporal Classification (CTC) loss to handle sequence information without requiring exact start/end times for low-level annotations.
  • Generates explanations in the form of concept sequences and counterfactual examples.

Main Results:

  • X-CHAR achieves robust performance comparable to baseline end-to-end deep learning models for time series data.
  • The model successfully provides explanations in the form of understandable, high-level concepts.
  • A mechanical Turk study confirmed that X-CHAR's explanations are more understandable than those from existing methods.

Conclusions:

  • X-CHAR offers a viable solution for explainable complex HAR, reducing developer burden and enhancing model trust.
  • The approach effectively balances prediction accuracy with interpretable explanations for time series data.
  • This work advances the field of interpretable AI in safety-critical HAR applications.