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Mathematical Aspects of Shape Analysis for Object Recognition

机译:用于对象识别的形状分析的数学方面

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In this paper we survey some of the mathematical techniques that have led to useful new results in shape analysis and their application to a variety of object recognition tasks. In particular, we will show how these techniques allow one to solve a number of fundamental problems related to object recognition for configurations of point features under a generalized weak perspective model of image formation. Our approach makes use of progress in shape theory and includes the development of object-image equations for shape matching and the exploitation of shape space metrices (especially object-image metrics) to measure matching up to certain transformations. This theory is built on advanced mathematical techniques from algebraic and differential geometry which are used to construct generalized shape spaces for various projection and sensor models. That construction in turn is used to find natural metrics that express the distance (geometric difference) between two configurations of object features, two configurations of image features, or an object and an image pair. Such metrics are believed to produce the most robust tests for object identification; at least as far as the object's geometry is concerned. Moreover, these metrics provide a basis for efficient hashing schemes to do identification quickly, and they provide a rigorous foundation for error and statistical analysis in any recognition system. The most important feature of a shape theoretic approach is that all of the matching tests and metrics are independent of the choice of coordinates used to express the feature locations on the object or in the image. In addition, the approach is independent of the camera/sensor position and any camera/sensor parameters. Finally, the method is also independent of object pose or image orientation. This is what makes the results so powerful.
机译:在本文中,我们调查了一些数学技术,这些技术已在形状分析及其在各种对象识别任务中的应用中带来了有用的新结果。特别是,我们将展示这些技术如何在图像形成的广义弱透视模型下解决一个与点识别有关的点识别配置的基本问题。我们的方法利用了形状理论的进步,包括开发了用于形状匹配的对象-图像方程式以及对形状空间量度(尤其是对象-图像量度)的利用,以测量特定变换的匹配度。该理论建立在代数和微分几何的高级数学技术基础之上,这些数学技术用于为各种投影和传感器模型构造广义的形状空间。该构造又用于查找自然度量,这些自然度量表达对象特征的两种配置,图像特征的两种配置或对象与图像对之间的距离(几何差异)。据信,此类度量标准可为对象识别提供最可靠的测试。至少就对象的几何形状而言。此外,这些度量为高效的哈希方案提供了快速进行识别的基础,并且为任何识别系统中的错误和统计分析提供了严格的基础。形状理论方法的最重要特征是,所有匹配测试和度量均独立于用于表示对象或图像中特征位置的坐标选择。另外,该方法独立于相机/传感器位置和任何相机/传感器参数。最后,该方法还独立于物体姿态或图像方向。这就是使结果如此强大的原因。

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