论文标题

SR2CNN:信号识别的零射击学习

SR2CNN: Zero-Shot Learning for Signal Recognition

论文作者

Dong, Yihong, Jiang, Xiaohan, Zhou, Huaji, Lin, Yun, Shi, Qingjiang

论文摘要

信号识别是信号处理和通信领域中重大且具有挑战性的任务之一。通常,某些信号类执行识别任务的培训数据通常是一个普遍的情况。因此,作为图像处理领域广泛使用的,零击学习(ZSL)对于信号识别也非常重要。不幸的是,由于莫名其妙的信号语义,几乎没有研究有关该领域的ZSL。本文提出了一个ZSL框架,信号识别和重建卷积神经网络(SR2CNN),以解决这种情况下的相关问题。 SR2CNN背后的关键思想是通过引入跨熵损失,中心损耗和自动编码器损失的正确组合,学习信号语义特征空间的表示,并采用合适的距离度量空间,以使语义特征比最小距离的最小距离具有更大的级别距离。即使某些信号类别没有训练数据,提出的SR2CNN也可以区分信号。此外,由于语义特征空间中不断完善的类中心向量,SR2CNN可以在信号检测的帮助下逐渐改善自身。这些优点均通过广泛的实验来验证。

Signal recognition is one of significant and challenging tasks in the signal processing and communications field. It is often a common situation that there's no training data accessible for some signal classes to perform a recognition task. Hence, as widely-used in image processing field, zero-shot learning (ZSL) is also very important for signal recognition. Unfortunately, ZSL regarding this field has hardly been studied due to inexplicable signal semantics. This paper proposes a ZSL framework, signal recognition and reconstruction convolutional neural networks (SR2CNN), to address relevant problems in this situation. The key idea behind SR2CNN is to learn the representation of signal semantic feature space by introducing a proper combination of cross entropy loss, center loss and autoencoder loss, as well as adopting a suitable distance metric space such that semantic features have greater minimal inter-class distance than maximal intra-class distance. The proposed SR2CNN can discriminate signals even if no training data is available for some signal class. Moreover, SR2CNN can gradually improve itself in the aid of signal detection, because of constantly refined class center vectors in semantic feature space. These merits are all verified by extensive experiments.

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