3D deep learning-based sensor placement optimization for personalized ageing-in-place
This report presents a methodology for optima sensor placement in indoor setup using PointNet++ for 3D semantic segmentation followed by a coverage-based algorithm. The process begins with the pre-processing of point cloud data, followed by semantic segmentation using PointNet++ to identify key obje...
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2023
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sg-ntu-dr.10356-1660392023-04-21T15:39:43Z 3D deep learning-based sensor placement optimization for personalized ageing-in-place Wei, Yao Shen Zhiqi School of Computer Science and Engineering ZQShen@ntu.edu.sg Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence This report presents a methodology for optima sensor placement in indoor setup using PointNet++ for 3D semantic segmentation followed by a coverage-based algorithm. The process begins with the pre-processing of point cloud data, followed by semantic segmentation using PointNet++ to identify key objects in the scene, achieving point mIoU OF 54.9\% and voxel mIoU of 54.4\% on the evaluation set. To enhance the accuracy, a post-processing step with DBSCAN is implemented. The sensor placement algorithm then calculates the coverage for each candidiate sensor location, taking into consideration the sensing range, angle, and visibility through obstacles. The method is tested on various real-life environments, including a medium-sized bedroom and a large living room. Results demonstrate the efficacy of the approach, with sensor coverage ranging from 87\% to 99\% in the bedroom and up to 65\% for a single sensor in the living room. However, limitations include the time complexity of the algorithm and its performance on more complex floor plans. The study provides a foundation for further development in optimizing sensor placement in indoor environments while considering factors such as connectivity and interaction between multiple sensors. Bachelor of Science in Data Science and Artificial Intelligence 2023-04-20T04:51:54Z 2023-04-20T04:51:54Z 2023 Final Year Project (FYP) Wei, Y. (2023). 3D deep learning-based sensor placement optimization for personalized ageing-in-place. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/166039 https://hdl.handle.net/10356/166039 en application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering::Computing methodologies::Artificial intelligence Wei, Yao 3D deep learning-based sensor placement optimization for personalized ageing-in-place |
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This report presents a methodology for optima sensor placement in indoor setup using PointNet++ for 3D semantic segmentation followed by a coverage-based algorithm. The process begins with the pre-processing of point cloud data, followed by semantic segmentation using PointNet++ to identify key objects in the scene, achieving point mIoU OF 54.9\% and voxel mIoU of 54.4\% on the evaluation set. To enhance the accuracy, a post-processing step with DBSCAN is implemented. The sensor placement algorithm then calculates the coverage for each candidiate sensor location, taking into consideration the sensing range, angle, and visibility through obstacles. The method is tested on various real-life environments, including a medium-sized bedroom and a large living room. Results demonstrate the efficacy of the approach, with sensor coverage ranging from 87\% to 99\% in the bedroom and up to 65\% for a single sensor in the living room. However, limitations include the time complexity of the algorithm and its performance on more complex floor plans. The study provides a foundation for further development in optimizing sensor placement in indoor environments while considering factors such as connectivity and interaction between multiple sensors. |
author2 |
Shen Zhiqi |
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Shen Zhiqi Wei, Yao |
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Final Year Project |
author |
Wei, Yao |
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Wei, Yao |
title |
3D deep learning-based sensor placement optimization for personalized ageing-in-place |
title_short |
3D deep learning-based sensor placement optimization for personalized ageing-in-place |
title_full |
3D deep learning-based sensor placement optimization for personalized ageing-in-place |
title_fullStr |
3D deep learning-based sensor placement optimization for personalized ageing-in-place |
title_full_unstemmed |
3D deep learning-based sensor placement optimization for personalized ageing-in-place |
title_sort |
3d deep learning-based sensor placement optimization for personalized ageing-in-place |
publisher |
Nanyang Technological University |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/166039 |
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1764208054785540096 |