首页> 外文会议>9th European Symposium on Artificial Neural Networks, Apr 25-27, 2001, Bruges, Belgium >Weight Perturbation Learning Algorithm with Local Learning Rate Adaptation for the Classification of Remote-Sensing Images
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Weight Perturbation Learning Algorithm with Local Learning Rate Adaptation for the Classification of Remote-Sensing Images

机译:自适应局部学习速率权重学习算法在遥感图像分类中的应用

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The weight perturbation learning algorithm was formerly developed by hardware designers for its friendly features in the perspective of the analog on-chip implementation. Therefore it has not been used for real-world applications but it has been verified only on test problems. To significantly increase its attitude for the on-chip implementation, we proposed a local learning rate adaptation technique, which anyway, increases also the performance. At the same time to demonstrate the efficiency of the weight perturbation algorithm, in this paper we report the results of the application of the proposed algorithm to the classification of remote-sensing images. Our results compare favorably with those reported in the literature and demonstrate the soundness of the proposed approach.
机译:重量扰动学习算法以前是由硬件设计人员出于在片上模拟实现方面的友好功能而开发的。因此,它尚未用于实际应用中,但仅在测试问题上得到了验证。为了显着提高其对片上实现的态度,我们提出了一种本地学习速率自适应技术,该技术无论如何也可以提高性能。在证明权重扰动算法的有效性的同时,我们报告了该算法在遥感图像分类中的应用结果。我们的结果与文献报道的结果相比具有优势,并证明了所提出方法的正确性。

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