深度学习的多阶段融合和非相似性正则化

Young-Rae Cho, Seungjun Shin, Sung-Hyuk Yim, Hyun-Woong Cho, Woo‐Jin Song
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引用次数: 2

摘要

我们提出了一种用于深度学习的多阶段融合流(MFS)和非相似性正则化(DisReg)。使用DisReg估计单个传感器流的特征映射之间的相似度。DisReg应用于每个单传感器流的学习问题,因此它们具有不同类型的特征映射。MFS的每个阶段都融合了从单个传感器流中提取的特征图。该方案通过学习新的模式来融合来自异构传感器的信息,这些模式仅使用单个传感器流的特征映射无法观察到。通过测试该方法在合成孔径雷达和红外图像上的目标自动识别能力,对该方法进行了评价。通过与传统算法的比较,证明了该融合方案的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multistage fusion and dissimilarity regularization for deep learning
We propose a multistage fusion stream (MFS) and dissimilarity regularization (DisReg) for deep learning. The degree of similarity between the feature maps of a single-sensor stream is estimated using DisReg. DisReg is applied to the learning problems of each single-sensor stream, so they have distinct types of feature map. Each stage of the MFS fuses the feature maps extracted from single-sensor streams. The proposed scheme fuses information from heterogeneous sensors by learning new patterns that cannot be observed using only the feature map of a single-sensor stream. The proposed method is evaluated by testing its ability to automatically recognize targets in a synthetic aperture radar and infrared images. The superiority of the proposed fusion scheme is demonstrated by comparison with conventional algorithm.
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