The Layout Consistent Random Field for Recognizing and Segmenting Partially Occluded Objects

J. Winn, J. Shotton
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引用次数: 318

Abstract

This paper addresses the problem of detecting and segmenting partially occluded objects of a known category. We first define a part labelling which densely covers the object. Our Layout Consistent Random Field (LayoutCRF) model then imposes asymmetric local spatial constraints on these labels to ensure the consistent layout of parts whilst allowing for object deformation. Arbitrary occlusions of the object are handled by avoiding the assumption that the whole object is visible. The resulting system is both efficient to train and to apply to novel images, due to a novel annealed layout-consistent expansion move algorithm paired with a randomised decision tree classifier. We apply our technique to images of cars and faces and demonstrate state-of-the-art detection and segmentation performance even in the presence of partial occlusion.
部分遮挡物体识别与分割的布局一致随机场
本文研究了已知类别部分遮挡物体的检测和分割问题。我们首先定义一个零件标签,它密集地覆盖了对象。然后,我们的布局一致随机场(LayoutCRF)模型对这些标签施加不对称的局部空间约束,以确保部件的一致布局,同时允许对象变形。通过避免整个物体可见的假设来处理物体的任意遮挡。由于采用了一种新的退火布局一致扩展移动算法与随机决策树分类器相结合,该系统既能有效地训练图像,又能有效地应用于新图像。我们将我们的技术应用于汽车和人脸图像,即使在存在部分遮挡的情况下也展示了最先进的检测和分割性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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