A Method for Robust Online Classification using Dictionary Learning: Development and Assessment for Monitoring Manual Material Handling Activities Using Wearable Sensors
Babak Barazandeh, Mohammadhussein Rafieisakhaei, Sunwook Kim, Zhenyu, (James) Kong, Maury A. Nussbaum

TL;DR
This paper introduces a dictionary learning-based method to enhance sparse classification accuracy and efficiency for real-time monitoring of manual material handling activities using wearable sensors.
Contribution
It proposes an optimized dictionary learning approach to improve sparse representation classification for online human activity monitoring.
Findings
Outperforms benchmark methods in classification accuracy.
Reduces computational time for online processing.
Effective in monitoring manual material handling activities.
Abstract
Classification methods based on sparse estimation have drawn much attention recently, due to their effectiveness in processing high-dimensional data such as images. In this paper, a method to improve the performance of a sparse representation classification (SRC) approach is proposed; it is then applied to the problem of online process monitoring of human workers, specifically manual material handling (MMH) operations monitored using wearable sensors (involving 111 sensor channels). Our proposed method optimizes the design matrix (aka dictionary) in the linear model used for SRC, minimizing its ill-posedness to achieve a sparse solution. This procedure is based on the idea of dictionary learning (DL): we optimize the design matrix formed by training datasets to minimize both redundancy and coherency as well as reducing the size of these datasets. Use of such optimized training data can…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Structural Health Monitoring Techniques · Indoor and Outdoor Localization Technologies
