Urban Object Recognition from Informative Local Features

G. Fritz, C. Seifert, L. Paletta
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引用次数: 24

Abstract

Autonomous mobile agents require object recognition for high level interpretation and localization in complex scenes. In urban environments, recognition of buildings might play a dominant role in robotic systems that need object based navigation, that take advantage of visual feedback and multimodal information for self-localization, or that enable association to related information from the identified semantics. We present a new method – the informative local features approach – based on an information theoretic saliency measure that is rapidly derived from a local Parzen window density estimation in feature subspace. From the learning of a decision tree based mapping to informative features, it enables attentive access to discriminative information and thereby significantly speeds up the recognition process. This approach is highly robust with respect to severe degrees of partial occlusion, noise, and tolerant to some changes in scale and illumination. We present performance evaluation on our publicly available reference object database (TSG-20) that demonstrates the efficiency of this approach, case wise even outperforming the SIFT feature approach [1]. Building recognition will be advantageous in various application domains, such as, mobile mapping, unmanned vehicle navigation, and systems for car driver assistance.
基于信息局部特征的城市目标识别
在复杂的场景中,自主移动代理需要对象识别来进行高层次的解释和定位。在城市环境中,建筑物识别可能在机器人系统中发挥主导作用,这些系统需要基于对象的导航,利用视觉反馈和多模态信息进行自我定位,或者能够从识别的语义中关联相关信息。本文提出了一种基于信息论显著性度量的信息局部特征方法,该方法由特征子空间中的局部Parzen窗口密度估计快速导出。从基于映射的决策树的学习到信息特征,它可以专注地访问判别信息,从而显著加快识别过程。这种方法对于严重程度的局部遮挡、噪声以及尺度和光照的一些变化具有高度的鲁棒性。我们对公开可用的参考对象数据库(TSG-20)进行了性能评估,证明了该方法的效率,在案例方面甚至优于SIFT特征方法[1]。建筑识别将在移动地图、无人驾驶汽车导航和汽车驾驶员辅助系统等各种应用领域发挥优势。
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