数据驱动的范例模型选择

Ishan Misra, Abhinav Shrivastava, M. Hebert
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引用次数: 23

摘要

我们考虑发现适合于目标检测的判别样例问题。由于现实世界中物体外观的多样性,物体检测器必须捕捉尺度、视点、光照等方面的变化。目前的方法是通过使用混合模型来做到这一点,其中每个混合被设计为捕获一个(或几个)变化轴。目前的方法通常依赖于启发式来捕捉这些变化;然而,目前尚不清楚哪些变异轴存在并与特定任务相关。另一个问题是需要大量的训练图像来捕捉这些变化。由于训练时间的复杂性[31]或测试时间的复杂性[26],目前的方法不能扩展到大型训练集。在这项工作中,我们探索了从数据本身紧凑地捕获适合任务的变化的想法。我们提出了一个两阶段的数据驱动过程,该过程选择和学习一组紧凑的样本模型用于目标检测。这些选择的模型具有固有的排名,可用于任何时间/预算检测场景。我们的方法的另一个好处(除了计算加速之外)是选定的范例模型集比整个集执行得更好。
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Data-driven exemplar model selection
We consider the problem of discovering discriminative exemplars suitable for object detection. Due to the diversity in appearance in real world objects, an object detector must capture variations in scale, viewpoint, illumination etc. The current approaches do this by using mixtures of models, where each mixture is designed to capture one (or a few) axis of variation. Current methods usually rely on heuristics to capture these variations; however, it is unclear which axes of variation exist and are relevant to a particular task. Another issue is the requirement of a large set of training images to capture such variations. Current methods do not scale to large training sets either because of training time complexity [31] or test time complexity [26]. In this work, we explore the idea of compactly capturing task-appropriate variation from the data itself. We propose a two stage data-driven process, which selects and learns a compact set of exemplar models for object detection. These selected models have an inherent ranking, which can be used for anytime/budgeted detection scenarios. Another benefit of our approach (beyond the computational speedup) is that the selected set of exemplar models performs better than the entire set.
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