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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >Study on the Combined Application of CFAR and Deep Learning in Ship Detection
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Study on the Combined Application of CFAR and Deep Learning in Ship Detection

机译:CFAR和深度学习在船舶检测中的综合应用研究

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摘要

To maintain national socio-economic development and maritime rights and interests, it is necessary to obtain the space location information of various ships. Therefore, it is important to detect the locations of ships accurately and rapidly. At present, ship detection is mainly carried out by combining satellite remote sensing imaging with constant false alarm rate (CFAR) detection. However, with the rapid development of satellite remote sensing technology, remote sensing data have gradually begun to show the characteristics of "big data"; additionally, the accuracy and speed of ship detection can be improved by analysing big data, such as by deep learning. Thus, a ship detection algorithm that combines CFAR and CNN is proposed based on the CFAR global detection algorithm and image recognition with the CNN model. Compared with the multi-level CFAR algorithm that is based on multithreading, the algorithm in this paper is more suitable for application to ship detection systems.
机译:为了维持国家社会经济发展和海上权益,有必要获得各种船舶的空间位置信息。 因此,重要的是准确且快速地检测船舶的位置。 目前,船舶检测主要通过将卫星遥感成像与恒定的误报率(CFAR)检测组合来进行。 然而,随着卫星遥感技术的快速发展,遥感数据逐渐开始显示“大数据”的特征; 此外,通过分析大数据,例如通过深度学习,可以提高船舶检测的准确性和速度。 因此,基于CNN模型的CFAR全局检测算法和图像识别提出了一种组合CFAR和CNN的船舶检测算法。 与基于多线程的多级CFAR算法相比,本文中的算法更适合于应用于送货检测系统。

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