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Detection and Restoration of Defective Lines in the SPOT 4 SWIR Band

机译:SPOT 4 SWIR波段中缺陷线的检测和恢复

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This paper presents the categorization and restoration of defective lines developed in pushbroom images. About 100 of the 3000 SPOT 4 SWIR detectors malfunction, which degrades image quality. Conventional methods have difficulties in effectively detecting and restoring defective lines, because they ignore the heterogeneity of the ground surface and the presence of sporadically unstable detectors with gain and offset that vary during a scan. While all defective lines have previously been considered as a single type, here they are categorized into three types according to the variation pattern in the scanning direction: constant defective lines, irregular defective lines, and irrecoverable defective lines. The detection procedure utilizes summed data and standard deviation data that consist of abnormal peaks originating from defective lines and a slowly varying baseline reflecting the surface characteristics within the image. The defective lines are detected by finding abnormal peaks, and classified and restored by using either a moment-matching method or interpolation, depending upon their types. Three SPOT 4 images were used to test and evaluate the performance of the proposed method. From the test results, the constant defective line was the most common type, comprising about 60%, while the irregular defective lines caused serious image degradation because of the difficulty of detecting and classifying them. Commission and omission errors were less than 10% and detection accuracy was higher than 90%. The analysis of signal-to-noise ratio (SNR) showed that the low SNR created by the defective lines was effectively removed. Our method gave a significant improvement of the detection and restoration capability.
机译:本文介绍了在推扫图像中出现的缺陷线的分类和修复。 3000 SPOT 4 SWIR检测器中约有100个发生故障,从而降低了图像质量。常规方法难以有效地检测和恢复有缺陷的线路,因为它们忽略了地面的异质性以及存在增益和偏移在扫描过程中变化的偶发不稳定的探测器。尽管所有缺陷线以前都被视为单一类型,但在此根据扫描方向上的变化模式将它们分为三种类型:恒定缺陷线,不规则缺陷线和不可恢复的缺陷线。该检测过程利用总和数据和标准偏差数据,这些数据由源自缺陷线的异常峰和反映图像内表面特征的缓慢变化的基线组成。通过查找异常峰值来检测缺陷线,并根据其类型使用矩量匹配法或插值法对其进行分类和恢复。使用三个SPOT 4图像来测试和评估该方法的性能。从测试结果来看,恒定缺陷线是最常见的类型,占大约60%,而不规则缺陷线则由于难以检测和分类而导致严重的图像劣化。佣金和遗漏误差小于10%,检测精度高于90%。对信噪比(SNR)的分析表明,缺陷线所产生的低SNR被有效地消除了。我们的方法大大提高了检测和恢复能力。

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