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Performance Investigation of Hybrid YOLO-VGG16 Based Ship Detection Framework Using SAR Images

机译:采用SAR图像的混合yolo-VGG16船舶检测框架性能调查

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Synthetic Aperture Radar (SAR) images are realized as encouraging data information for checking oceanic activities and its function for oil and ship recognizable proof, which is the focal point of numerous past research considers for better spatial goals. Several article discovery strategies extending from customary to deep learning approaches are proposed. Ship detection framework in deep learning technique accomplishes high execution, which benefits from a SAR free open dataset (SFOD). Nonetheless, a dominant part of them are computationally dangerous and have exactness issues. The main problem identified is when the number of images increases, performance may decrease. To overcome this, we propose a technique called Hybrid YOLO, which realizes K-Means Clustering and WordTree for object identification and image classification. Hybrid YOLO also realizes SEPD for the improvement between sea clutter and ship targets and bounding boxes for the probability update network. The proposed model is implemented using Conda, used with Tensorflow and Keras Framework utilizing the SAR Ship Dataset. The presentation of the Hybrid YOLO model is enhanced in rapports of accuracy and performance measures when compared with other existing models.
机译:合成孔径雷达(SAR)图像被实现为令人鼓舞的数据信息,用于检查海洋活动及其对石油和船舶识别证明的功能,这是众多过去研究的焦点考虑了更好的空间目标。提出了从习惯于深入学习方法延伸的几篇文章发现策略。深度学习技术中的船舶检测框架完成了高执行,这是从SAR自由开放数据集(SFOD)的好处。尽管如此,它们的主导部分是计算危险的,并且具有精确的问题。所识别的主要问题是当图像的数量增加时,性能可能会降低。为了克服这一点,我们提出了一种称为混合YOLO的技术,它意识到K-Means群集和Wordtree用于对象识别和图像分类。 Hybrid Yolo还实现了SEPD,用于概率更新网络的海杂波和船舶目标和船舶目标和边界框之间的改进。所提出的模型是使用Conda实现的,用于利用SAR Ship DataSet的Tensorflow和Keras框架。与其他现有模型相比,在准确性和性能措施的关系中提高了混合YOLO模型的呈现。

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