Similarity-based data mining for online domain adaptation of a sonar ATR system
Similarity-based data mining for online domain adaptation of a sonar ATR system
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.
Jean de Bodinat、Jose Vazquez、Marija Jegorova、Thomas Guerneve
军事技术自动化技术、自动化技术设备计算技术、计算机技术
Jean de Bodinat,Jose Vazquez,Marija Jegorova,Thomas Guerneve.Similarity-based data mining for online domain adaptation of a sonar ATR system[EB/OL].(2020-09-16)[2025-08-02].https://arxiv.org/abs/2009.07560.点此复制
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