基于掩模自编码器的船舶检测开集识别网络

Pinjie Li;Jing Wu;Qianchuan Zhao;Xiaoyan Liu;Liguo Liu;Ziyuan Yang;Tao Zhang
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引用次数: 0

摘要

在遥感图像分类中,开放集识别(open-set recognition, OSR)的目标是准确分类已知类别,同时有效地拒绝未知类别样本或识别潜在的新类别。尽管现有的方法在识别已知类方面取得了长足的进步,但它们在处理未知类样本方面表现出明显的局限性。本文介绍了一种用于船舶检测的OSR模型,称为基于掩码自编码器(MAE)的OSR (MOSR),它利用了MAE的鲁棒表示学习能力。MOSR不仅在识别已知类别时保持了较高的准确率,而且在识别未知类别样本时显著提高了识别性能。在RSHIP-137遥感自定义数据集上的综合实验验证了MOSR模型的有效性和优越性。与最先进的(SOTA)对抗互反点学习(ARPL)方法相比,MOSR在船舶检测中未知类别识别的已知类别识别精度和接收器工作特征曲线下面积(AUROC)方面都有显着提高。本研究为船舶遥感探测中的OSR提供了一种新的解决方案,为未来的研究提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MOSR: An Open-Set Recognition Network Based on Masked Autoencoder for Ship Detection
In remote sensing image classification, open-set recognition (OSR) poses a significant challenge, aiming to accurately classify known categories while effectively rejecting unknown class samples or identifying potential novel categories. Although existing methods have made strides in recognizing known classes, they exhibit notable limitations in handling unknown class samples. This letter introduces an OSR model for ship detection, termed masked autoencoder (MAE)-based OSR (MOSR), which leverages the robust representation learning capabilities of the MAE. MOSR not only sustains high accuracy in the recognition of known classes but also markedly enhances the performance in the identification of unknown class samples. Comprehensive experiments on the custom RSHIP-137 remote sensing dataset validate the efficacy and superiority of the MOSR model. Compared with the state-of-the-art (SOTA) adversarial reciprocal point learning (ARPL) method, MOSR shows substantial improvements in both known class recognition accuracy and the area under the receiver operating characteristic curve (AUROC) for unknown class recognition for ship detection. This study presents a novel solution for OSR in remote sensing ship detection and offers valuable insights for future research.
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