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Machine learning approach for ship detection using remotely sensed images

机译:使用遥感图像进行船舶检测的机器学习方法

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Events in the past have suggested that the coastal security has to be improved and constant watch over the sea is required. Remotely sensed images being a rich source of information can be used for the same. However, the processing of remotely sensed images in order to extract the required information is a challenging task. Furthermore, the system has to be trained in order to automate the process of ship detection from the acquired images. This Paper aims onto reviewing the various existing methods for ship detection stating their advantages and limitations. It also states the experimental results obtained by using Haar-like algorithm which has been widely used in the field of image recognition. The drawbacks of this technique such as its exponential time consumption and negligence of ships in the port have been rectified with a novel methodology which uses Tensor Flow technology and Decision Boundary Feature Extraction(DBFE).
机译:过去发生的事件表明,必须改善沿海安全,并需要不断监视海上。可以将遥感图像作为丰富的信息源来使用。但是,处理遥感图像以提取所需信息是一项艰巨的任务。此外,必须对系统进行培训,以便从获取的图像中自动进行船舶检测过程。本文旨在回顾各种现有的船舶探测方法,说明其优势和局限性。还陈述了使用类似Haar的算法获得的实验结果,该算法已广泛应用于图像识别领域。该技术的缺点,例如它的指数时间消耗和港口船只的疏忽,已经通过使用Tensor Flow技术和决策边界特征提取(DBFE)的新方法得以纠正。

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