Improved YOLOX-S Marine Oil Spill Detection Based on SAR Images

Shuai Zhang, Jun Xing, Xinzhe Wang, Jianchao Fan
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引用次数: 1

Abstract

Marine oil spill spreads rapidly and has a long-term impact. Once it occurs, it will cause severe damage to the ecological environment. Synthetic Aperture Radar (SAR) is widely used in marine oil spill monitoring due to its all-weather and all-day characteristics. However, the contrast of different SAR images is inconsistent, making it difficult for the network to learn valuable features. To address this issue, this paper proposes an improved YOLOX-S (IYOLOX-S) model for marine oil spill detection. The model enhances image contrast by a truncated linear stretch module, uses CspDarknet and PANnet to extract image features, and obtains oil spill detection results through Decoupled Head. First, a truncated linear stretching module is added, which can improve the image contrast. It also highlights the characteristics of oil spill areas to enhance the networks learning ability. Second, the proposed score loss into the global loss function enhances the learning ability of the model and improves the detection accuracy. Experiments are carried out on the collected oil spill dataset, and the test sets average precision (AP) is 90.02%. The experimental results show that the improved YOLOX-S model accurately identifies oil spill areas.
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基于SAR图像的改进YOLOX-S海洋溢油检测
海洋溢油蔓延迅速,影响深远。一旦发生,将对生态环境造成严重破坏。合成孔径雷达(SAR)由于其全天候、全天候的特点,在海洋溢油监测中得到了广泛的应用。然而,不同SAR图像的对比度不一致,使得网络难以学习到有价值的特征。针对这一问题,本文提出了一种改进的海洋溢油检测模型(IYOLOX-S)。该模型通过截断线性拉伸模块增强图像对比度,利用CspDarknet和PANnet提取图像特征,并通过解耦Head获得溢油检测结果。首先,加入截断的线性拉伸模块,提高图像对比度;突出溢油区域的特点,增强网络的学习能力。其次,将分数损失引入到全局损失函数中,增强了模型的学习能力,提高了检测精度。在收集的溢油数据集上进行了实验,测试集的平均精度(AP)为90.02%。实验结果表明,改进的YOLOX-S模型能够准确识别溢油区域。
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