On the Influence of Viewpoint Change for Metric Learning

Marco Filax, F. Ortmeier
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引用次数: 1

Abstract

Physical objects imaged through a camera change their visual representation based on various factors, c.g., illumination, occlusion, or viewpoint changes. Thus, it is the inevitable goal in computer vision systems to use mathematical representations of these objects robust to various changes and yet sufficient to determine even minor differences to distinguish objects. However, finding these powerful representations is challenging if the amount of data is limited, such as in few-shot learning problems. In this work, we investigate the influence of viewpoint changes in modern recognition systems in the context of metric learning problems, in which fine-grained differences differentiate objects based on their learned numeric representation. Our results demonstrate that restricting the degrees of freedom, especially by fixing the virtual viewpoint using synthetic frontal views, elevates the overall performance. We await that our observation of an increased performance using rectified patches is persistent and reproducible in other scenarios.
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论观点转变对公制学习的影响
物理对象通过相机成像改变其视觉表现基于各种因素,例如,照明,遮挡,或视点的变化。因此,在计算机视觉系统中,使用这些对象的数学表示对各种变化具有鲁棒性,并且足以确定甚至微小的差异以区分对象是不可避免的目标。然而,如果数据量有限,例如在少量的学习问题中,找到这些强大的表示是具有挑战性的。在这项工作中,我们研究了在度量学习问题的背景下,视点变化对现代识别系统的影响,其中细粒度差异根据学习到的数字表示来区分对象。我们的研究结果表明,限制自由度,特别是通过使用合成正面视图固定虚拟视点,可以提高整体性能。我们期待我们观察到的使用修正补丁的性能提高在其他场景中是持久的和可重复的。
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