Point cloud-based action recognition
Action recognition has received a lot of attention in computer vision tasks. It aims to capture and classify the action in a certain input like a video. In this project, we firstly thoroughly review two major methods for action recognition tasks, i.e., the skeleton-based method and the point cloud-b...
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2022
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sg-ntu-dr.10356-1578372023-07-07T19:03:59Z Point cloud-based action recognition Zhou, Chenhang Alex Chichung Kot School of Electrical and Electronic Engineering Rapid-Rich Object Search (ROSE) Lab EACKOT@ntu.edu.sg Engineering::Electrical and electronic engineering Action recognition has received a lot of attention in computer vision tasks. It aims to capture and classify the action in a certain input like a video. In this project, we firstly thoroughly review two major methods for action recognition tasks, i.e., the skeleton-based method and the point cloud-based method. Second, to enhance video understanding, we select LSTM architecture which has proved to be competent in sequential understanding. We design sampling mechanisms for a video frame and point cloud to efficiently express the point cloud raw data for training on the LSTM network with NTU RGB+D 60 Dataset, contributed by NTU ROSE Lab. To investigate the relation within training parameters, multiple experiments are implemented based on PointLSTM architecture and we conclude model performance by evaluating the batch size, frame rate, and points number accordingly. We also find model discrepancies within different action classes based on the confusion matrix. Further, we compare different LSTM stages’ effects on model accuracy. Last, considering the nature of point cloud data, we conclude this project and make recommendations for further work. Bachelor of Engineering (Electrical and Electronic Engineering) 2022-05-24T04:08:00Z 2022-05-24T04:08:00Z 2022 Final Year Project (FYP) Zhou, C. (2022). Point cloud-based action recognition. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/157837 https://hdl.handle.net/10356/157837 en A3096-211 application/pdf Nanyang Technological University |
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Engineering::Electrical and electronic engineering Zhou, Chenhang Point cloud-based action recognition |
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Action recognition has received a lot of attention in computer vision tasks. It aims to capture and classify the action in a certain input like a video. In this project, we firstly thoroughly review two major methods for action recognition tasks, i.e., the skeleton-based method and the point cloud-based method. Second, to enhance video understanding, we select LSTM architecture which has proved to be competent in sequential understanding. We design sampling mechanisms for a video frame and point cloud to efficiently express the point cloud raw data for training on the LSTM network with NTU RGB+D 60 Dataset, contributed by NTU ROSE Lab.
To investigate the relation within training parameters, multiple experiments are implemented based on PointLSTM architecture and we conclude model performance by evaluating the batch size, frame rate, and points number accordingly. We also find model discrepancies within different action classes based on the confusion matrix. Further, we compare different LSTM stages’ effects on model accuracy. Last, considering the nature of point cloud data, we conclude this project and make recommendations for further work. |
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Alex Chichung Kot |
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Alex Chichung Kot Zhou, Chenhang |
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Final Year Project |
author |
Zhou, Chenhang |
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Zhou, Chenhang |
title |
Point cloud-based action recognition |
title_short |
Point cloud-based action recognition |
title_full |
Point cloud-based action recognition |
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Point cloud-based action recognition |
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Point cloud-based action recognition |
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point cloud-based action recognition |
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Nanyang Technological University |
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2022 |
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https://hdl.handle.net/10356/157837 |
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1772826335357435904 |