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Ship Detection Based on Faster R-CNN Network in Optical Remote Sensing Images

机译:基于更快的R-CNN网络在光遥感图像中的船舶检测

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摘要

A ship detection model based on Faster R-CNN is proposed for ship detection tasks in optical remote sensing images. Deep convolutional neural network could replace traditional manual design feature to extract ship features automatically and quickly from makes the detection performance of ship no longer relying on the design of artificial features. This paper proposes a strategy that combines the model with two different size of convolution neural networks respectively. Experiments on datasets HRSC16 verify the models detection capabilities and the mean average precision can achieve 78.2%. For the problem of low recall rate in the detection of adjacent vessels, this paper adopts the Soft-NMS method. Compared with the traditional NMS, the Soft-NMS method can electively improve the model detection performance to 80.1%. At the same time, it also shows that the model we proposed is a robust model and has a certain degree of generalization ability.
机译:基于更快的R-CNN的船舶检测模型被提出用于光遥感图像中的船舶检测任务。深度卷积神经网络可以取代传统的手动设计功能,自动提取船舶功能,并从使船舶的检测性能不再依赖于人工特征的设计。本文提出了一种策略,即将模型与两种不同大小的卷积神经网络相结合。数据集HRSC16的实验验证了模型检测功能,平均平均精度可实现78.2%。对于在检测到相邻容器中的低召回速率的问题,本文采用了软动力学方法。与传统的NMS相比,软网方法可以选择性地改善模型检测性能至80.1%。同时,它还表明我们提出的模型是一种强大的模型,具有一定程度的泛化能力。

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