Publications by authors named "Yi-Nung Chung"

This paper presents an interaction-embedded hidden Markov model (IE-HMM) framework for automatically detecting and classifying individual human behaviors and group interactions. The proposed framework comprises a switch control (SC) module, an individual duration HMM (IDHMM) module, and an interaction-coupled duration HMM (ICDHMM) module. By analyzing the relative distances between the various participants in each scene, and monitoring the duration for which these distances are maintained, the SC module assigns each participant to an individual behavior unit (comprising a single participant) or an interaction behavior unit (comprising two or more participants).

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Kinematic approaches using MR images have been regarded of more accuracy in knee pain (AKP) detection than stationary approaches. However, the challenge in segmenting femur, patellar and tibia due to the intensity non-uniformity caused by magnetic propagation degradation in MR images, and the strong adhesion of the soft tissue around the knee organs, has restricted the use of kinematic approaches. This paper proposes a combinatorial based kinematic patellar tracking (CKPT) for AKP detection.

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Article Synopsis
  • This paper introduces a new method called constrained energy minimization (CEM) for classifying magnetic resonance (MR) images, which focuses on detecting spectral signatures.
  • The CEM method treats different spectral channels like sensors, enabling it to identify specific spectral signatures without needing to know the image background.
  • Experimental results demonstrate that CEM outperforms the commonly used c-means method, highlighting its effectiveness for MR image classification.
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