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Combining image regions and human activity for indirect object recognition in indoor wide-angle views

机译:结合图像区域和人类活动以间接识别室内广角视图中的物体

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Traditional methods of object recognition are reliant on shape and so are very difficult to apply in cluttered, wide angle and low detail views such as surveillance scenes. To address this, a method of indirect object recognition is proposed, where human activity is used to infer both the location and identity of objects. No shape analysis is necessary. The concept is dubbed 'interaction signatures', since the premise is that a human interacts with objects in ways characteristic of the function of that object - for example, a person sits in a chair and drinks from a cup. The human-centred approach means that recognition is possible in low detail views and is largely invariant to the shape of objects within the same functional class. This paper implements a Bayesian network for classifying region patches with object labels, building upon our previous work in automatically segmenting and recognising a human's interactions with the objects. Experiments show that interaction signatures can successfully find and label objects in low detail views and are equally effective at recognising test objects that differ markedly in appearance from the training objects.
机译:传统的对象识别方法依赖于形状,因此很难应用于杂乱,广角和低细节的视图中,例如监视场景。为了解决这个问题,提出了一种间接物体识别的方法,其中人类活动被用来推断物体的位置和身份。无需形状分析。该概念被称为“交互签名”,因为前提是人与物体以该物体功能的特征进行交互,例如,一个人坐在椅子上喝一杯。以人为中心的方法意味着可以在低细节视图中进行识别,并且在很大程度上不会改变同一功能类别中对象的形状。本文实现了一种贝叶斯网络,用于对带有对象标签的区域斑块进行分类,以我们先前在自动分割和识别人与对象的交互作用方面的工作为基础。实验表明,交互签名可以成功地在低细节视图中找到并标记对象,并且在识别外观上与训练对象明显不同的测试对象方面同样有效。

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