Improvement of the method for uncoupled binary input-output CNN template decomposition

L. Kék
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Abstract

This paper proposes an improved method for systematic decomposition of Boolean operators into a sequence of simpler ones. The improvement has two main components: (i) a sufficient condition for decreasing the number of possible child-templates during decomposition; (ii) pointing out the template element, the elimination of which results in the possibly maximum increment of the robustness value of the template. Examples are presented to demonstrate the effectiveness of the proposed method, whose advantages and limitations are also discussed.
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非耦合二进制输入输出CNN模板分解方法的改进
本文提出了一种改进的布尔算子系统分解成一系列更简单的算子的方法。改进有两个主要组成部分:(i)在分解过程中减少可能的子模板数量的充分条件;(ii)指出模板元素,该元素的消除可能导致模板鲁棒性值的最大增量。通过实例验证了该方法的有效性,并讨论了该方法的优点和局限性。
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