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Stacked Deformable Part Model with Shape Regression for Object Part Localization

机译:用于对象零件定位的具有形状回归的堆叠可变形零件模型

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This paper explores the localization of pre-defined semantic object parts, which is much more challenging than traditional object detection and very important for applications such as face recognition, HCI and fine-grained object recognition. To address this problem, we make two critical improvements over the widely used deformable part model (DPM). The first is that we use appearance based shape regression to globally estimate the anchor location of each part and then locally refine each part according to the estimated anchor location under the constraint of DPM. The DPM with shape regression (SR-DPM) is more flexible than the traditional DPM by relaxing the fixed anchor location of each part. It enjoys the efficient dynamic programming inference as traditional DPM and can be discriminatively trained via a coordinate descent procedure. The second is that we propose to stack multiple SR-DPMs, where each layer uses the output of previous SR-DPM as the input to progressively refine the result. It provides an analogy to deep neural network while benefiting from hand-crafted feature and model. The proposed methods are applied to human pose estimation, face alignment and general object part localization tasks and achieve state-of-the-art performance.
机译:本文探讨了预定义的语义对象部分的本地化,这比传统的对象检测更具挑战性,并且对于诸如人脸识别,HCI和细粒度对象识别之类的应用非常重要。为了解决这个问题,我们对广泛使用的可变形零件模型(DPM)进行了两项关键的改进。首先是我们使用基于外观的形状回归来全局估计每个零件的锚点位置,然后在DPM约束下根据估计的锚点位置局部细化每个零件。通过放松每个零件的固定锚点位置,具有形状回归功能的DPM(SR-DPM)比传统DPM更灵活。它具有像传统DPM一样的高效动态编程推理能力,并且可以通过协调下降过程进行区分训练。第二个是我们建议堆叠多个SR-DPM,其中每个层都使用先前SR-DPM的输出作为输入来逐步完善结果。它提供了与深度神经网络的类比,同时得益于手工制作的功能和模型。所提出的方法被应用于人体姿势估计,面部对齐和一般对象部分定位任务,并实现了最新的性能。

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