信息保存目标识别

Margrit Betke, N. Makris
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引用次数: 14

摘要

根据统计估计理论,从参数化的角度研究了复杂现实场景中物体图像的识别问题。从物体的Fisher信息中提取物体复杂性的标量度量,该度量在仿射变换和图像噪声水平变化下是不变的。费雪信息的体积为特定图像中物体的可识别性提供了总体统计度量,而复杂性提供了任何图像中物体特征的本质物理度量。在此基础上,提出了一种用于复杂场景中物体图像识别的信息保存方法。这里的“信息守恒”一词是指该方法使用了与目标可识别性相关的所有测量数据,达到了任何无偏估计的估计误差的理论下界,因此在统计上是最优的。然后,该方法成功地应用于在数千个复杂的现实世界场景中寻找图像对象。
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Information-conserving object recognition
Following the theory of statistical estimation, the problem of recognizing objects imaged in complex real-world scenes is examined from a parametric perspective. A scalar measure of an object's complexity, which is invariant under affine transformation and changes in image noise level, is extracted from the object's Fisher information. The volume of Fisher information is shown to provide an overall statistical measure of the object's recognizability in a particular image, while the complexity provides an intrinsically physical measure that characterizes the object in any image. An information-conserving method is then developed for recognizing an object imaged in a complex scene. Here the term information-conserving means that the method uses all the measured data pertinent to the object's recognizability, attains the theoretical lower bound on estimation error for any unbiased estimate, and therefore is statistically optimal. This method is then successfully applied to finding objects imaged in thousands of complex real-world scenes.
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