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Processing string fusion for automated sea mine classification in shallow water

机译:浅水中自动海矿分类的处理串融合

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A novel sea mine computer-aided-detection computer-aided-classification (CADICAC) processing string has been developed. The overall CAD/CAC processing string consists of preprocessing, adaptive clutter filtering (ACF), normalization, detection, feature extraction, feature orthogonalization, optimal subset feature selection, classification and fusion processing blocks. The range-dimension ACF is matched both to average highlight and shadow information, while also adaptively suppressing background clutter. For each detected object, features are extracted and processed through an orthogonalization transformation, enabling an efficient application of the optimal log-likelihood-ratio-test (LLRT) classification rule, in the orthogonal feature space domain. The classified objects of 3 distinct processing strings are fused using the classification confidence values as features and logic-based, "M-out-of-N", or LLRT-based fusion rules. The utility of the overall processing strings and their fusion was demonstrated with shallow water high-resolution sonar imagery data. The processing string detection and classification parameters were tuned and the string classification performance was optimized, by appropriately selecting a subset of the original feature set. A significant improvement was made to the CAD/CAC processing string by utilizing a repeated application of the subset feature selection / LLRT classification blocks. It was shown that LLRT-based fusion algorithms outperform the logic based or the "M-out-of-N" ones. The LLRT-based fusion of the CAD/CAC processing strings resulted in up to a eight-fold false alarm rate reduction, compared to the best single CAD/CAC processing string results, while maintaining a constant correct mine classification probability.
机译:已经开发了一种新型海矿电脑辅助检测计算机辅助分类(CADICAC)处理串。整体CAD / CAC处理字符串由预处理,自适应杂波滤波(ACF),归一化,检测,特征提取,特征正交,最佳子集特征选择,分类和融合处理块组成。范围维度ACF与平均亮点和阴影信息相匹配,同时也适自动化抑制背景杂波。对于每个检测到的对象,通过正交化转换提取和处理特征,使得能够在正交特征空间域中有效地应用最佳日志似然比 - 测试(LLRT)分类规则。 3个不同处理字符串的分类对象使用分类置信度值作为特征和基于逻辑的“M-OUT-NO”或基于LLRT的融合规则。浅水高分辨率声纳图像数据证明了整体处理字符串及其融合的效用。调整处理字符串检测和分类参数并通过适当地选择原始功能集的子集来优化字符串分类性能。通过利用子集特征选择/ LLRT分类块的重复应用,对CAD / CAC处理串进行了显着改进。结果表明,基于LLRT的融合算法优于基于逻辑的逻辑或“M-OUT-OF-NO”。与最佳单CAD / CAC处理串的结果相比,基于CAD / CAC处理字符串的基于CAD / CAC处理串的熔断导致八倍的误报率降低,同时保持恒定的矿井分类概率。

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