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A method for expecting the features of objects and enabling real-time vision processing

机译:一种期待物体特征并实现实时视觉处理的方法

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This paper presents a mathematical analysis of image processing, algorithms designed according to the results of this analysis, and their implementation. We prove that the search of objects features can be accelerated without loss of precision by using an inhomogeneous density of the sensitive cells the parameters space is composed of. In other words, the visual analysis should be concentrated in the region of the features space around the expected object position. The improvement relative to an uniform cell density is quantified using a cost function corresponding to time and precision optimisation. We show that a Kohonen neural network can be used for efficient image processing, and simulate this strategy. We introduce a simpler algorithm for the case that the object positions are Gauss-distributed around the expected position. This algorithm has been implemented it on a robot guided by a vision system. The robot learned to process images efficiently during the manoeuvres and after that was able to track objects moving in a fast and unpredictable manner.
机译:本文介绍了图像处理的数学分析,根据分析结果设计的算法及其实现。我们证明,通过使用参数空间组成的敏感单元格的不均匀密度,可以加速对象特征的搜索而不会降低精度。换句话说,视觉分析应集中在预期对象位置周围的特征空间区域中。使用与时间和精度优化相对应的成本函数来量化相对于均匀细胞密度的改善。我们表明,Kohonen神经网络可用于有效的图像处理,并模拟该策略。对于对象位置围绕期望位置高斯分布的情况,我们引入了一种更简单的算法。该算法已在视觉系统引导的机器人上实现。机器人学会了在操纵过程中有效地处理图像,此后便能够以快速且不可预测的方式跟踪运动的对象。

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