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Autores principales: Aamir, Muhammad, Muramatsu, Naoya, Shin, Sangyun, Wijers, Matthew, Zhong, Jia-Xing, Hou, Xinyu, Patel, Amir, Loveridge, Andrew, Markham, Andrew
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2603.16816
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author Aamir, Muhammad
Muramatsu, Naoya
Shin, Sangyun
Wijers, Matthew
Zhong, Jia-Xing
Hou, Xinyu
Patel, Amir
Loveridge, Andrew
Markham, Andrew
author_facet Aamir, Muhammad
Muramatsu, Naoya
Shin, Sangyun
Wijers, Matthew
Zhong, Jia-Xing
Hou, Xinyu
Patel, Amir
Loveridge, Andrew
Markham, Andrew
contents Depth estimation and 3D reconstruction have been extensively studied as core topics in computer vision. Starting from rigid objects with relatively simple geometric shapes, such as vehicles, the research has expanded to address general objects, including challenging deformable objects, such as humans and animals. However, for the animal, in particular, the majority of existing models are trained based on datasets without metric scale, which can help validate image-only models. To address this limitation, we present WildDepth, a multimodal dataset and benchmark suite for depth estimation, behavior detection, and 3D reconstruction from diverse categories of animals ranging from domestic to wild environments with synchronized RGB and LiDAR. Experimental results show that the use of multi-modal data improves depth reliability by up to 10% RMSE, while RGB-LiDAR fusion enhances 3D reconstruction fidelity by 12% in Chamfer distance. By releasing WildDepth and its benchmarks, we aim to foster robust multimodal perception systems that generalize across domains.
format Preprint
id arxiv_https___arxiv_org_abs_2603_16816
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle WildDepth: A Multimodal Dataset for 3D Wildlife Perception and Depth Estimation
Aamir, Muhammad
Muramatsu, Naoya
Shin, Sangyun
Wijers, Matthew
Zhong, Jia-Xing
Hou, Xinyu
Patel, Amir
Loveridge, Andrew
Markham, Andrew
Computer Vision and Pattern Recognition
Digital Libraries
Depth estimation and 3D reconstruction have been extensively studied as core topics in computer vision. Starting from rigid objects with relatively simple geometric shapes, such as vehicles, the research has expanded to address general objects, including challenging deformable objects, such as humans and animals. However, for the animal, in particular, the majority of existing models are trained based on datasets without metric scale, which can help validate image-only models. To address this limitation, we present WildDepth, a multimodal dataset and benchmark suite for depth estimation, behavior detection, and 3D reconstruction from diverse categories of animals ranging from domestic to wild environments with synchronized RGB and LiDAR. Experimental results show that the use of multi-modal data improves depth reliability by up to 10% RMSE, while RGB-LiDAR fusion enhances 3D reconstruction fidelity by 12% in Chamfer distance. By releasing WildDepth and its benchmarks, we aim to foster robust multimodal perception systems that generalize across domains.
title WildDepth: A Multimodal Dataset for 3D Wildlife Perception and Depth Estimation
topic Computer Vision and Pattern Recognition
Digital Libraries
url https://arxiv.org/abs/2603.16816