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A Study of Parts-Based Object Class Detection Using Complete Graphs

机译:基于完整图的基于零件的对象类别检测研究

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摘要

Object detection is one of the key components in modern computer vision systems. While the detection of a specific rigid object under changing viewpoints was considered hard just a few years ago, current research strives to detect and recognize classes of non-rigid, articulated objects. Hampered by the omnipresent confusing information due to clutter and occlusion, the focus has shifted from holistic approaches for object detection to representations of individual object parts linked by structural information, along with richer contextual descriptions of object configurations. Along this line of research, we present a practicable and expandable probabilistic framework for parts-based object class representation, enabling the detection of rigid and articulated object classes in arbitrary views. We investigate learning of this representation from labelled training images and infer globally optimal solutions to the contextual MAP-detection problem, using A *-search with a novel lower-bound as admissible heuristic. An assessment of the inference performance of Belief-Propagation and Tree-Reweighted Belief Propagation is obtained as a by-product. The generality of our approach is demonstrated on four different datasets utilizing domain dependent information cues. Keywords Object detection - Object class recognition - Graphical models - Conditional random fields - Classification - Multi-class - Learning - Inference - Optimization - Single view - Multiple view - 2D/3D pose
机译:目标检测是现代计算机视觉系统中的关键组件之一。尽管几年前才发现很难在变化的视点下检测特定的刚性物体,但当前的研究致力于检测和识别非刚性,铰接物体的类别。由于混乱和遮挡,到处都是混乱的信息,阻碍的重点已从整体的对象检测方法转移到由结构信息链接的单个对象部分的表示,以及对象配置的更丰富的上下文描述。沿着这方面的研究,我们为基于零件的对象类表示提供了一个可行且可扩展的概率框架,从而可以在任意视图中检测刚性和铰接的对象类。我们调查从标记的训练图像中学习这种表示形式,并使用A * -search(具有新颖的下界作为可允许的启发式方法)来推断上下文MAP检测问题的全局最优解。作为副产品,获得了对信念传播和树加权的信念传播的推理性能的评估。我们的方法的普遍性在利用域相关信息提示的四个不同数据集上得到了证明。关键词对象检测-对象类别识别-图形模型-条件随机字段-分类-多类别-学习-推理-优化-单视图-多视图-2D / 3D姿势

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