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Global Receptive-Based Neural Network for Target Recognition in SAR Images

机译:基于全球性接收的SAR图像目标识别神经网络

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摘要

The past years have witnessed a revival of neural network and learning strategies. These models configure multiple hidden layers hierarchically and require large amounts of labeled samples to estimate the model parameters. It is yet difficult to be met for target recognition under the realistic environments. For either space borne or airborne radars, collecting multiple samples with label information is very expensive and difficult. In addition, the huge computational cost and poor speed of convergence limit the practical applications. To address the problems, this article presents a new thought of receptive, under which a special hierarchy of feedforward neural network has been built. The proposed strategy consists of two sequential modules: 1) feature generation and 2) feature refinement. We first build pairwise baseline signals by means of the Riesz transform along the range and the azimuth, and extend them to a family of receptive signals using the bandpass filter bank. The input SAR image is then generally convoluted with the set of receptive signals to extract the global features. Certain kinds of information can be then exploited. We make the receptive signals predefined, rather than learned automatically, to handle the environment of a small sample size. In addition, the expert knowledge can be transmitted into the neural network. The resulting features are further refined by a special unit, wherein the input neurons and the latent states are bridged by the weights and the bias randomly generated. They are fixed during the training process. On the other hand, we cast the latent state into the Hilbert space, forming the kernel version of refinement. We aim to achieve the comparable or even better performance yet with limited training resources.
机译:过去几年目睹了神经网络的复兴和学习策略。这些模型分层配置多个隐藏层,需要大量标记的样本来估计模型参数。在现实环境下,难以满足目标识别。对于任何空间传承或空中雷达,收集带有标签信息的多个样本非常昂贵且困难。此外,巨大的计算成本和收敛速度不佳限制了实际应用。为了解决问题,本文提出了一种接受的新思想,已经建立了前馈神经网络的特殊等级。所提出的策略包括两个顺序模块:1)特征生成和2)特征精制。我们首先通过沿着范围和方位角的RIESZ变换来构建成对基线信号,并将它们扩展到使用带通滤波器组的一系列接收信号。然后,输入SAR图像通常用一组接收信号卷曲以提取全局特征。然后可以利用某些类型的信息。我们使预定义的接收信号,而不是自动学习,以处理小样本大小的环境。此外,专家知识可以传输到神经网络中。由此产生的特征通过特殊单元进一步改进,其中输入神经元和潜在的状态被重量和随机产生的偏置桥接。它们在培训过程中固定。另一方面,我们将潜在的状态施放到希尔伯特空间中,形成细化的内核版本。我们的目标是实现了有限培训资源的可比性甚至更好的性能。

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