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Shrikanth S Narayana - One of the best experts on this subject based on the ideXlab platform.

  • toward robust interpretable human movement pattern analysis in a workplace setting
    International Conference on Acoustics Speech and Signal Processing, 2019
    Co-Authors: Ando M Ooth, Tiantia Feng, Abhishek Jangalwa, Shrikanth S Narayana
    Abstract:

    Gaining a better understanding of how people move about and interact with their environment is an important piece of understanding human behavior. Careful analysis of individuals’ deviations or variations in movement over time can provide an awareness about changes to their physical or mental state and may be helpful in tracking performance and well-being especially in workplace settings. We propose a technique for clustering and discovering patterns in human movement data by extracting motifs from the time series of durations where participants linger at different locations. Using a data set of over 200 participants moving around a hospital for ten weeks, we show this technique intuitively captures local temporal relationships between hospital rooms and also clusters them in a fashion consistent with the room type labels (e.g. lounge, break room, etc.) without using prior knowledge. machine learning features derived from these clusters are empirically shown to provide information similar to features attained using domain knowledge of the room type labels directly when predicting mental wellness from self-reports.

Shrikanth S. Narayanan - One of the best experts on this subject based on the ideXlab platform.

  • ICASSP - Toward Robust Interpretable Human Movement Pattern Analysis in a Workplace Setting
    ICASSP 2019 - 2019 IEEE International Conference on Acoustics Speech and Signal Processing (ICASSP), 2019
    Co-Authors: Brandon M. Booth, Abhishek Jangalwa, Tiantian Feng, Shrikanth S. Narayanan
    Abstract:

    Gaining a better understanding of how people move about and interact with their environment is an important piece of understanding human behavior. Careful analysis of individuals’ deviations or variations in movement over time can provide an awareness about changes to their physical or mental state and may be helpful in tracking performance and well-being especially in workplace settings. We propose a technique for clustering and discovering patterns in human movement data by extracting motifs from the time series of durations where participants linger at different locations. Using a data set of over 200 participants moving around a hospital for ten weeks, we show this technique intuitively captures local temporal relationships between hospital rooms and also clusters them in a fashion consistent with the room type labels (e.g. lounge, break room, etc.) without using prior knowledge. machine learning features derived from these clusters are empirically shown to provide information similar to features attained using domain knowledge of the room type labels directly when predicting mental wellness from self-reports.

Abhishek Jangalwa - One of the best experts on this subject based on the ideXlab platform.

  • toward robust interpretable human movement pattern analysis in a workplace setting
    International Conference on Acoustics Speech and Signal Processing, 2019
    Co-Authors: Ando M Ooth, Tiantia Feng, Abhishek Jangalwa, Shrikanth S Narayana
    Abstract:

    Gaining a better understanding of how people move about and interact with their environment is an important piece of understanding human behavior. Careful analysis of individuals’ deviations or variations in movement over time can provide an awareness about changes to their physical or mental state and may be helpful in tracking performance and well-being especially in workplace settings. We propose a technique for clustering and discovering patterns in human movement data by extracting motifs from the time series of durations where participants linger at different locations. Using a data set of over 200 participants moving around a hospital for ten weeks, we show this technique intuitively captures local temporal relationships between hospital rooms and also clusters them in a fashion consistent with the room type labels (e.g. lounge, break room, etc.) without using prior knowledge. machine learning features derived from these clusters are empirically shown to provide information similar to features attained using domain knowledge of the room type labels directly when predicting mental wellness from self-reports.

  • ICASSP - Toward Robust Interpretable Human Movement Pattern Analysis in a Workplace Setting
    ICASSP 2019 - 2019 IEEE International Conference on Acoustics Speech and Signal Processing (ICASSP), 2019
    Co-Authors: Brandon M. Booth, Abhishek Jangalwa, Tiantian Feng, Shrikanth S. Narayanan
    Abstract:

    Gaining a better understanding of how people move about and interact with their environment is an important piece of understanding human behavior. Careful analysis of individuals’ deviations or variations in movement over time can provide an awareness about changes to their physical or mental state and may be helpful in tracking performance and well-being especially in workplace settings. We propose a technique for clustering and discovering patterns in human movement data by extracting motifs from the time series of durations where participants linger at different locations. Using a data set of over 200 participants moving around a hospital for ten weeks, we show this technique intuitively captures local temporal relationships between hospital rooms and also clusters them in a fashion consistent with the room type labels (e.g. lounge, break room, etc.) without using prior knowledge. machine learning features derived from these clusters are empirically shown to provide information similar to features attained using domain knowledge of the room type labels directly when predicting mental wellness from self-reports.

Ando M Ooth - One of the best experts on this subject based on the ideXlab platform.

  • toward robust interpretable human movement pattern analysis in a workplace setting
    International Conference on Acoustics Speech and Signal Processing, 2019
    Co-Authors: Ando M Ooth, Tiantia Feng, Abhishek Jangalwa, Shrikanth S Narayana
    Abstract:

    Gaining a better understanding of how people move about and interact with their environment is an important piece of understanding human behavior. Careful analysis of individuals’ deviations or variations in movement over time can provide an awareness about changes to their physical or mental state and may be helpful in tracking performance and well-being especially in workplace settings. We propose a technique for clustering and discovering patterns in human movement data by extracting motifs from the time series of durations where participants linger at different locations. Using a data set of over 200 participants moving around a hospital for ten weeks, we show this technique intuitively captures local temporal relationships between hospital rooms and also clusters them in a fashion consistent with the room type labels (e.g. lounge, break room, etc.) without using prior knowledge. machine learning features derived from these clusters are empirically shown to provide information similar to features attained using domain knowledge of the room type labels directly when predicting mental wellness from self-reports.

Brandon M. Booth - One of the best experts on this subject based on the ideXlab platform.

  • ICASSP - Toward Robust Interpretable Human Movement Pattern Analysis in a Workplace Setting
    ICASSP 2019 - 2019 IEEE International Conference on Acoustics Speech and Signal Processing (ICASSP), 2019
    Co-Authors: Brandon M. Booth, Abhishek Jangalwa, Tiantian Feng, Shrikanth S. Narayanan
    Abstract:

    Gaining a better understanding of how people move about and interact with their environment is an important piece of understanding human behavior. Careful analysis of individuals’ deviations or variations in movement over time can provide an awareness about changes to their physical or mental state and may be helpful in tracking performance and well-being especially in workplace settings. We propose a technique for clustering and discovering patterns in human movement data by extracting motifs from the time series of durations where participants linger at different locations. Using a data set of over 200 participants moving around a hospital for ten weeks, we show this technique intuitively captures local temporal relationships between hospital rooms and also clusters them in a fashion consistent with the room type labels (e.g. lounge, break room, etc.) without using prior knowledge. machine learning features derived from these clusters are empirically shown to provide information similar to features attained using domain knowledge of the room type labels directly when predicting mental wellness from self-reports.