一种基于遗传算法的视频图像目标运动估计新技术

E. Dixon, C. P. Markhauser, K. R. Rao
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引用次数: 11

摘要

在寻找低比特率图像压缩和表示的过程中,提出了一种新的视频运动估计技术(VMET),该技术考虑了视频对象的平移、旋转和平面多层。这一新概念采用改进的多种群协同进化遗传算法(MMCGA),该算法接收分割的参考图像中的视频对象,并利用对象和层基因型输出相应的运动和层信息。重复应用繁殖、交叉、突变和优势等遗传操作策略,以创造具有更好适应度的连续一代基因组,直到达到收敛或最大允许的代数。为了提高预测精度和收敛速度,采用了终身适应度策略。合成图像的仿真结果表明,该方法在精度、有效性、鲁棒性、简单性和速度等方面都优于传统的视频运动估计算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Object Motion Estimation Technique For Video Images, Based On A Genetic Algorithm
In the search for lower bit rate image compression and representation, a new video motion estimation technique (VMET), that considers video object translation, as well as rotation, and planar multilayering, is described. This new concept uses a modified multipopulation coevolutionary genetic algorithm (MMCGA), that receives the video objects of segmented reference images, and outputs the corresponding motion and layer information, using object and layer genotypes. Genetic operation strategies of reproduction, crossover, mutation, and dominance are applied recurrently in order to create successive generations of genomes with much better fitness, until convergence, or the maximum allowed number of generations is reached. For the increase of prediction accuracy and convergence speed, a lifetime fitness strategy is used. Simulations with synthetic images have shown very encouraging results with the proposed video motion estimation technique, which competes favorably with respect to the conventional algorithms in accuracy, effectiveness, robustness, simplicity and speed.
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