增量模型学习和未知对象的构建

K. Kwak, Jihong Min, Seongyong Ahn
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引用次数: 0

摘要

模型对于许多计算机视觉应用非常重要,例如对象识别、检测和跟踪。人们可以在没有模型的情况下执行任务,但是有了模型,人们可以更好地执行任务。这些任务还必须处理以前看不见的对象出现的情况。在这种情况下,系统必须学习新的对象,或者简单地推导出以前从未见过的对象的描述。在本文中,我们提出使用激光雷达和视觉创建和使用在线近似对象模型。近似模型用三维物体的近似几何形状和外观表示。我们通过持续跟踪对象和估计代表同一对象的不同视图的团的连通性来在线构建模型。为了通过传感器融合在线创建模型,我们研究了两种逐步建模方法:1)基于运动的建模和2)近似三维建模。实验结果证明了所提出的时间累积的二维和三维模型表示的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental model learning and building of unknown objects
Models are very important for many computer vision applications, such as object recognition, detection, and tracking. One can manage to perform the tasks without models, but with models, one can perform the tasks better. These tasks must also handle situation where previously unseen objects appear. In such cases the system must learn the new object or simply derive the descriptions for the object never seen before. In this paper, we propose the creation and use of an online approximate object model using a lidar and vision. The approximate model is represented with the approximate geometry and appearance of 3D objects. We build the model online by tracking the object consistently and estimating the connectivity of cliques representing different views of the same object. To create an model online by the sensor fusion, we investigate two stepwise modeling approaches: 1) motion-based modeling and 2) approximate 3D modeling. Experimental results demonstrate the viability of the proposed time-accumulated 2D and 3D model representation.
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