用对象和以查看器为中心的表示来识别来自任何视图的对象

Sainan Liu, Vincent Nguyen, Isaac Rehg, Z. Tu
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引用次数: 3

摘要

在本文中,我们解决了计算机视觉中的一个重要任务:任意视图对象识别。在训练和测试中,对于每个对象实例,我们只给出其从未知角度观看的2D图像。我们提出了一个计算框架,通过设计对象和观察者为中心的神经网络(OVCNet)来识别从任意未知角度观察的对象实例。OVCNet由三个分支组成,分别实现以对象为中心、以3D查看器为中心和以平面查看器为中心的识别。我们使用两个指标来评估我们提出的OVCNet,这些指标具有来自已见和新对象实例的未见视图。实验结果表明,OVCNet优于经典的基于2D图像的CNN分类器、3d对象(从2D图像推断)分类器和基于多视图的竞争方法。它提出了一种可行和实用的计算框架,结合了视点依赖和视点独立的特征,用于从任何视图识别物体。
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Recognizing Objects From Any View With Object and Viewer-Centered Representations
In this paper, we tackle an important task in computer vision: any view object recognition. In both training and testing, for each object instance, we are only given its 2D image viewed from an unknown angle. We propose a computational framework by designing object and viewer-centered neural networks (OVCNet) to recognize an object instance viewed from an arbitrary unknown angle. OVCNet consists of three branches that respectively implement object-centered, 3D viewer-centered, and in-plane viewer-centered recognition. We evaluate our proposed OVCNet using two metrics with unseen views from both seen and novel object instances. Experimental results demonstrate the advantages of OVCNet over classic 2D-image-based CNN classifiers, 3D-object (inferred from 2D image) classifiers, and competing multi-view based approaches. It gives rise to a viable and practical computing framework that combines both viewpoint-dependent and viewpoint-independent features for object recognition from any view.
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