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Adaptive large-scale clutter removal from imagery with application to high-resolution sonar imagery

机译:图像中的自适应大规模杂波去除及其在高分辨率声纳图像中的应用

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The ability to reliably detect targets having signatures comprised of bright pixels (highlight) and dark pixels (shadow) is challenging when the background texture of the imagery also possesses bright and dark characteristics. This is especially difficult when the background contains large bright and dark areas that can mask target signatures. Detection and classification algorithms would benefit from an adaptive denoising algorithm that would remove or mitigate such background artifacts. This paper presents a Fourier-based denoising algorithm. The large support of the Fourier basis is used to capture and remove large-scale artifacts while leaving the smaller target-size features nearly unchanged. Data-driven soft thresholds allow the algorithm to automatically adapt to changing backgrounds. Preliminary investigations have demonstrated excellent performance. The algorithm is computationally fast and suitable for real-time application. The denoising algorithm is general in nature and can be applied to many types of high-resolution gray-scale imagery; e.g., side-looking sonar and SAR.
机译:当图像的背景纹理还具有亮和暗特征时,可靠地检测具有包括亮像素(高亮)和暗像素(阴影)的签名的目标的能力具有挑战性。当背景包含可能掩盖目标特征的较大的明暗区域时,这尤其困难。检测和分类算法将从自适应降噪算法中受益,该算法将去除或减轻这种背景伪像。本文提出了一种基于傅立叶的去噪算法。傅立叶基础的强大支持用于捕获和移除大规模伪像,同时使较小的目标尺寸特征几乎保持不变。数据驱动的软阈值使算法可以自动适应不断变化的背景。初步调查显示了出色的性能。该算法计算速度快,适合实时应用。去噪算法本质上是通用的,可以应用于多种类型的高分辨率灰度图像;例如,例如,侧面声纳和SAR。

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