Toward Cooperative 3D Object Reconstruction with Multi-agent

Xiong Li, Zhenyu Wen, Leiqiang Zhou, Chenwei Li, Yejian Zhou, Taotao Li, Zhen Hong
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引用次数: 1

Abstract

We study the problem of object reconstruction in a multi-agent collaboration scenario. Specifically, we focus on the reconstruction of specific goals through several cooperative agents equipped with vision sensors to achieve higher efficiency than single agents. Our main insight is that a complete 3D object can be split into several local 3D models and assigned to different agents. In addition, we can use the salient characteristics of the collaboration agent itself to help realize the integration of local models. We develop a novel pipeline that first restores local 3D models from the images obtained from different agents, then the relative poses between collaborative agents are estimated by aligning intrinsic features. After that, all local models are integrated using the estimated parameters. Extensive experiments show that our proposed method is capable of accurately reconstructing 3D objects in the real world in a multi-agent collaborative manner. The full reconstruction pipeline is released to the public as an open-source project.
基于多智能体的三维物体协同重建研究
研究了多智能体协作场景下的对象重构问题。具体来说,我们专注于通过配备视觉传感器的多个协作智能体来重建特定目标,以达到比单个智能体更高的效率。我们的主要见解是,一个完整的3D对象可以分成几个局部3D模型,并分配给不同的代理。此外,我们可以利用协作代理本身的显著特征来帮助实现局部模型的集成。我们开发了一种新的管道,首先从不同代理获得的图像中恢复局部3D模型,然后通过对齐内在特征来估计协作代理之间的相对姿态。然后,利用估计的参数对所有局部模型进行综合。大量的实验表明,我们提出的方法能够以多智能体协作的方式准确地重建现实世界中的三维物体。完整的重建管道作为开源项目向公众发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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