视频匹配中部分帧的相关性

Boris Kovalerchuk, Sergei Kovalerchuk
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引用次数: 2

摘要

分布式和运动传感器视频帧的关联和融合是视频匹配的一个重要领域。对于具有远距离可见的单个像素的对象的帧来说尤其困难,因为算法无法利用每个对象的结构。该算法使用代数结构方法将部分框架与此类小对象关联起来,该方法利用对象之间的结构关系,包括面积比率。该算法是完全仿射不变的,它包括任何旋转、移动和缩放。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Correlation of partial frames in video matching
Correlating and fusing video frames from distributed and moving sensors is important area of video matching. It is especially difficult for frames with objects at long distances that are visible as single pixels where the algorithms cannot exploit the structure of each object. The proposed algorithm correlates partial frames with such small objects using the algebraic structural approach that exploits structural relations between objects including ratios of areas. The algorithm is fully affine invariant, which includes any rotation, shift, and scaling.
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