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Using general master equation for feature fusion

机译:使用通用主方程进行特征融合

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The rational division of subsets is a key issue for feature fusion, which often requires that the feature data units in different subsets can be differentiated easily. Regarding this, this paper uses the transformation effect between microscopic and macroscopic of general master equation to widen the differences of fusion probability between the feature data units in different subsets. Then, based on the more differentiable feature data units with widened fusion probabilities, this paper proposes a new dynamic quantum inspired feature fusion method, which uses the Wootters statistical distance in probability space to detect the duplicate feature data and uses the weighted median operation to fuse the detected duplicate feature data. The experimental results show that the fusion performances on fusion rate, relative completeness, and conciseness of the proposed feature fusion method are encouraging.
机译:子集的合理划分是特征融合的关键问题,这通常要求可以轻松地区分不同子集中的特征数据单元。对此,本文利用一般主方程的微观与宏观之间的转换效应来加宽不同子集中特征数据单元之间融合概率的差异。然后,基于具有更大融合概率的可区分特征数据单元,提出了一种新的动态量子启发特征融合方法,该方法利用概率空间中的Wooters统计距离检测重复特征数据,并使用加权中值运算进行融合检测到的重复特征数据。实验结果表明,所提出的特征融合方法在融合率,相对完整性和简洁性方面的融合性能令人鼓舞。

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