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Similarity-based data mining for online domain adaptation of a sonar ATR system

机译:基于相似性的数据挖掘,用于声纳ATR系统的在线域适应

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Due to the expensive nature of field data gathering, the lack of training data often limits the performance of Automatic Target Recognition (ATR) systems. This problem is often addressed with domain adaptation techniques, however the currently existing methods fail to satisfy the constraints of resource and time-limited underwater systems. We propose to address this issue via an online fine-tuning of the ATR algorithm using a novel data-selection method. Our proposed data-mining approach relies on visual similarity and outperforms the traditionally-employed hard-mining methods. We present a comparative performance analysis in a wide range of simulated environments and highlight the benefits of using our method for the rapid adaptation to previously-unseen environments.
机译:由于现场数据收集的昂贵性质,缺乏训练数据通常会限制自动目标识别(ATR)系统的性能。此问题通常以域适配技术解决,但是当前现有的方法无法满足资源和时间有限的水下系统的约束。我们建议通过使用新型数据选择方法通过ATR算法的在线微调来解决此问题。我们所提出的数据采矿方法依赖于视觉相似性和优于传统使用的硬挖掘方法。我们在广泛的模拟环境中提出了一种比较性能分析,并突出了使用我们对先前看不见的环境快速适应方法的好处。

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