RenderFi: human pose rendering via wireless signals
Novel pose rendering is a burgeoning research area in many application scenarios, with the aid of human mesh reconstruction (HMR) methods to acquire external-source SMPL pose parameters. Existing HMR methods typically rely on images or wearable devices, where the former can be easily compromised by...
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Nanyang Technological University
2024
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sg-ntu-dr.10356-1776022024-05-31T15:49:59Z RenderFi: human pose rendering via wireless signals Huang, Runxi Xie Lihua School of Electrical and Electronic Engineering ELHXIE@ntu.edu.sg Computer and Information Science Novel pose rendering Wireless sensing Channel state information (CSI) Multimodal fusion Multi-task learning Novel pose rendering is a burgeoning research area in many application scenarios, with the aid of human mesh reconstruction (HMR) methods to acquire external-source SMPL pose parameters. Existing HMR methods typically rely on images or wearable devices, where the former can be easily compromised by poor lighting or occlusions, and the latter may cause privacy intrusions. To overcome these limitations, we introduce RenderFi, an end-to-end, multi-task, multimodal learning framework that integrates wireless signals and image-derived SMPL parameters to enhance cross-modal supervision. This approach not only improves the robustness of pose estimation under varying environmental conditions but also leverages synchronized multimodal data from the MM-Fi dataset. RenderFi processes inputs from multiple wireless sensor signals to generate accurate 3D human keypoints and SMPL pose parameters. Although our framework may not surpass traditional methods across all metrics, it pioneers new avenues for rendering human poses in static scenes. We demonstrate its potential through reconstructed views for novel pose rendering and through quantitative assessments in 3D human pose estimation. Master's degree 2024-05-29T05:37:49Z 2024-05-29T05:37:49Z 2024 Thesis-Master by Coursework Huang, R. (2024). RenderFi: human pose rendering via wireless signals. Master's thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/177602 https://hdl.handle.net/10356/177602 en application/pdf Nanyang Technological University |
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Computer and Information Science Novel pose rendering Wireless sensing Channel state information (CSI) Multimodal fusion Multi-task learning Huang, Runxi RenderFi: human pose rendering via wireless signals |
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Novel pose rendering is a burgeoning research area in many application scenarios, with the aid of human mesh reconstruction (HMR) methods to acquire external-source SMPL pose parameters. Existing HMR methods typically rely on images or wearable devices, where the former can be easily compromised by poor lighting or occlusions, and the latter may cause privacy intrusions. To overcome these limitations, we introduce RenderFi, an end-to-end, multi-task, multimodal learning framework that integrates wireless signals and image-derived SMPL parameters to enhance cross-modal supervision. This approach not only improves the robustness of pose estimation under varying environmental conditions but also leverages synchronized multimodal data from the MM-Fi dataset. RenderFi processes inputs from multiple wireless sensor signals to generate accurate 3D human keypoints and SMPL pose parameters. Although our framework may not surpass traditional methods across all metrics, it pioneers new avenues for rendering human poses in static scenes. We demonstrate its potential through reconstructed views for novel pose rendering and through quantitative assessments in 3D human pose estimation. |
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Xie Lihua |
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Xie Lihua Huang, Runxi |
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Thesis-Master by Coursework |
author |
Huang, Runxi |
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Huang, Runxi |
title |
RenderFi: human pose rendering via wireless signals |
title_short |
RenderFi: human pose rendering via wireless signals |
title_full |
RenderFi: human pose rendering via wireless signals |
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RenderFi: human pose rendering via wireless signals |
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RenderFi: human pose rendering via wireless signals |
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renderfi: human pose rendering via wireless signals |
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Nanyang Technological University |
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2024 |
url |
https://hdl.handle.net/10356/177602 |
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1800916295650115584 |