用于跟踪和监视任务的像素级蛇的类似cnn算法

D. L. Vilariño, D. Cabello, V. Brea
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引用次数: 4

摘要

本文讨论了像素级蛇形在运动物体分割中的应用。这种主动轮廓技术可以同时处理多个轮廓,而且没有时间损失,并且在需要时可以适当地处理它们之间的拓扑变换。实现CNNUM或特定目的CNN平台,解决了这类任务的速度要求。特别是,我们展示了一个类似的cnn算法,它满足当前CNNUM硬件实现的所有约束。
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An analogic CNN-algorithm of pixel level snakes for tracking and surveillance tasks
This paper addresses the application of the pixel level snakes for the segmentation of moving objects. This kind of active contour techniques can handle multiple contours simultaneously without time-processing penalty as well as to manage appropriately the topologic transformations among them when this is required. The implementation into a CNNUM or a specific purpose CNN platform gives solution to the speed requirements of this kind of tasks. Particularly, we show an analogic CNN-algorithm which meets all the constrains imposed for the current CNNUM hardware implementations.
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