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Image Compression using an Enhanced Self Organizing Map Algorithm with Vigilance Parameter

机译:使用带有警戒参数的增强型自组织映射算法进行图像压缩

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In this paper, a new approach for image compression is presented. The enhanced SOM algorithm applies a vigilance parameter in order to test if the maximum value of all activation functions in each training step exceeds the minimum threshold. If vigilance test is not passed, a new cluster will be added to the network; else the winner cluster will be updated. Therefore, the network could be extendable due to pattern distribution. The proposed approach is compared with ART1. The performance of enhanced SOM algorithm does not depend on the input presentation order. As observed through simulations, the new algorithm with vigilance parameter reduces the computational complexity, and presents better quality compared with Kohonen's SOM.
机译:本文提出了一种新的图像压缩方法。增强的SOM算法应用警惕性参数,以测试每个训练步骤中所有激活功能的最大值是否超过最小阈值。如果未通过警戒性测试,则将新集群添加到网络;否则获胜者集群将被更新。因此,由于模式分布,网络可以扩展。所提出的方法与ART1进行了比较。增强型SOM算法的性能不取决于输入的呈现顺序。通过仿真可以看出,与Kohonen的SOM相比,具有警惕性参数的新算法降低了计算复杂度,并提供了更好的质量。

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