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Biologically Inspired Progressive Enhancement Target Detection from Heavy Cluttered SAR Images

机译:重杂波SAR图像的生物启发式渐进增强目标检测

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摘要

High-resolution synthetic aperture radar (SAR) can provide a rich information source for target detection and greatly increase the types and number of target characteristics. How to efficiently extract the target of interest from large amounts of SAR images is the main research issue. Inspired by the biological visual systems, researchers have put forward a variety of biologically inspired visual models for target detection, such as classical saliency map and HMAX. But these methods only model the retina or visual cortex in the visual system, which limit their ability to extract and integrate targets characteristics; thus, their detection accuracy and efficiency can be easily disturbed in complex environment. Based on the analysis of retina and visual cortex in biological visual systems, a progressive enhancement detection method for SAR targets is proposed in this paper. The detection process is divided into RET, PVC, and AVC three stages which simulate the information processing chain of retina, primary and advanced visual cortex, respectively. RET stage is responsible for eliminating the redundant information of input SAR image, enhancing inputs’ features, and transforming them to excitation signals. PVC stage obtains primary features through the competition mechanism between the neurons and the combination of characteristics, and then completes the rough detection. In the AVC stage, the neurons with more receptive field compound more precise advanced features, completing the final fine detection. The experimental results obtained in this study show that the proposed approach has better detection results in comparison with the traditional methods in complex scenes.
机译:高分辨率合成孔径雷达(SAR)可以为目标检测提供丰富的信息源,并大大增加目标特征的类型和数量。如何从大量SAR图像中有效提取感兴趣的目标是主要的研究课题。受生物视觉系统的启发,研究人员提出了多种生物启发的视觉模型用于目标检测,例如经典显着图和HMAX。但是这些方法仅对视觉系统中的视网膜或视觉皮层进行建模,从而限制了它们提取和整合目标特征的能力。因此,在复杂的环境中,它们的检测精度和效率容易受到干扰。在分析生物视觉系统中视网膜和视觉皮层的基础上,提出了一种针对SAR目标的渐进增强检测方法。检测过程分为RET,PVC和AVC三个阶段,分别模拟视网膜,初级和高级视觉皮层的信息处理链。 RET阶段负责消除输入SAR图像的冗余信息,增强输入的功能,并将其转换为激励信号。 PVC阶段通过神经元之间的竞争机制和特征的组合获得主要特征,然后完成粗略检测。在AVC阶段,具有更强接收力场的神经元将具有更精确的高级特征,从而完成最终的精细检测。实验结果表明,与传统方法相比,该方法在复杂场景下具有更好的检测效果。

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