低分辨率雷达微多普勒特征的近离分布检测

Martin Bauw, S. Velasco-Forero, J. Angulo, C. Adnet, O. Airiau
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引用次数: 4

摘要

近离分布检测(OODD)的目的是在没有分类所需的监督的情况下区分语义上相似的数据点。提出了一种面向对象的雷达目标检测用例,可扩展到其他类型的传感器和检测场景。我们强调OODD的相关性及其在实际关键系统中对其他类似雷达目标和杂波中的多模态、不同目标类别的检测的具体监督要求。我们提出了模拟低分辨率脉冲雷达微多普勒特征的深度和非深度OODD方法的比较,同时考虑了谱和协方差矩阵输入表示。协方差表示的目的是估计专用二阶处理是否适合区分签名。讨论了标记异常在训练、自监督学习、对比学习洞察和创新训练损失中的潜在贡献,并研究了错误标记导致的训练集污染的影响。
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Near out-of-distribution detection for low-resolution radar micro-Doppler signatures
Near out-of-distribution detection (OODD) aims at discriminating semantically similar data points without the supervision required for classification. This paper puts forward an OODD use case for radar targets detection extensible to other kinds of sensors and detection scenarios. We emphasize the relevance of OODD and its specific supervision requirements for the detection of a multimodal, diverse targets class among other similar radar targets and clutter in real-life critical systems. We propose a comparison of deep and non-deep OODD methods on simulated low-resolution pulse radar micro-Doppler signatures, considering both a spectral and a covariance matrix input representation. The covariance representation aims at estimating whether dedicated second-order processing is appropriate to discriminate signatures. The potential contributions of labeled anomalies in training, self-supervised learning, contrastive learning insights and innovative training losses are discussed, and the impact of training set contamination caused by mislabelling is investigated.
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