Detecting Objects Using Deformation Dictionaries

Bharath Hariharan, C. L. Zitnick, Piotr Dollár
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引用次数: 18

Abstract

Several popular and effective object detectors separately model intra-class variations arising from deformations and appearance changes. This reduces model complexity while enabling the detection of objects across changes in view- point, object pose, etc. The Deformable Part Model (DPM) is perhaps the most successful such model to date. A common assumption is that the exponential number of templates enabled by a DPM is critical to its success. In this paper, we show the counter-intuitive result that it is possible to achieve similar accuracy using a small dictionary of deformations. Each component in our model is represented by a single HOG template and a dictionary of flow fields that determine the deformations the template may undergo. While the number of candidate deformations is dramatically fewer than that for a DPM, the deformed templates tend to be plausible and interpretable. In addition, we discover that the set of deformation bases is actually transferable across object categories and that learning shared bases across similar categories can boost accuracy.
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使用变形字典检测对象
一些流行的和有效的对象检测器分别模拟由变形和外观变化引起的类内变化。这降低了模型的复杂性,同时允许在视点、物体姿态等变化中检测物体。可变形部件模型(DPM)可能是迄今为止最成功的此类模型。一个常见的假设是,DPM支持的模板的指数数量对其成功至关重要。在本文中,我们展示了反直觉的结果,即使用小的变形字典可以达到类似的精度。我们模型中的每个组件都由一个单独的HOG模板和一个流场字典表示,流场字典决定了模板可能经历的变形。虽然候选变形的数量大大少于DPM,但变形的模板往往是可信的和可解释的。此外,我们发现变形基的集合实际上是可以跨对象类别转移的,并且学习跨相似类别的共享基可以提高准确性。
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