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Characterization of 3-D Volumetric Probabilistic Scenes for Object Recognition

机译:用于物体识别的3-D体积概率场景的表征

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摘要

This paper presents a new volumetric representation for categorizing objects in large-scale 3-D scenes reconstructed from image sequences. This work uses a probabilistic volumetric model (PVM) that combines the ideas of background modeling and volumetric multi-view reconstruction to handle the uncertainty inherent in the problem of reconstructing 3-D structures from 2-D images. The advantages of probabilistic modeling have been demonstrated by recent application of the PVM representation to video image registration, change detection and classification of changes based on PVM context. The applications just mentioned, operate on 2-D projections of the PVM. This paper presents the first work to characterize and use the local 3-D information in the scenes. Two approaches to local feature description are proposed and compared: 1) features derived from a PCA analysis of model neighborhoods; and 2) features derived from the coefficients of a 3-D Taylor series expansion within each neighborhood. The resulting description is used in a bag-of-features approach to classify buildings, houses, cars, planes, and parking lots learned from aerial imagery collected over Providence, RI. It is shown that both feature descriptions explain the data with similar accuracy and their effectiveness for dense-feature categorization is compared for the different classes. Finally, 3-D extensions of the Harris corner detector and a Hessian-based detector are used to detect salient features. Both types of salient features are evaluated through object categorization experiments, where only features with maximal response are retained. For most saliency criteria tested, features based on the determinant of the Hessian achieved higher classification accuracy than Harris-based features.
机译:本文提出了一种新的体积表示形式,用于对从图像序列重构的大规模3-D场景中的对象进行分类。这项工作使用概率体积模型(PVM),该模型结合了背景建模和体积多视图重建的思想来处理从2-D图像重建3-D结构问题中固有的不确定性。概率建模的优点已通过PVM表示在视频图像配准,更改检测和基于PVM上下文的更改分类的最新应用中得到证明。刚才提到的应用程序在PVM的二维投影上运行。本文介绍了表征和使用场景中局部3D信息的第一项工作。提出并比较了两种描述局部特征的方法:1)从模型邻域的PCA分析中得出的特征; 2)从每个邻域内的3-D泰勒级数展开的系数得出的特征。所得描述用于特征包方法中,以对从通过RI普罗维登斯(Providence)收集的航空影像中学到的建筑物,房屋,汽车,飞机和停车场进行分类。结果表明,两个特征描述都以相似的精度解释了数据,并针对不同类别比较了它们对密集特征分类的有效性。最后,Harris角检测器和基于Hessian的检测器的3-D扩展用于检测显着特征。两种类型的显着特征均通过对象分类实验进行评估,其中仅保留具有最大响应的特征。对于大多数经过测试的显着性标准,基于Hessian行列式的特征比基于Harris的特征具有更高的分类精度。

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