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Automatic Road Delineation Using Deep Neural Network

机译:使用深神经网络自动道路描绘

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Road extraction from high resolution satellite imagery has been a challenging task. The problem has been attempted by many people employing different methods and techniques and many have been able to solve it to a large extent. The novelty of this paper is to reach the end goal of providing a final product which can be used to generate semantically meaningful applications like vehicle detection, vehicle counting and determining the size of vehicle on the road. In this paper, an approach of road delineation in high resolution multi-spectral satellite imagery is proposed using Deep Neural Networks to generate a road binary mask. The binary mask comprising of objects is further processed with image processing techniques. Whereas to reduce the non-road objects, which are classified as road, object attributes such as object size and shape are used. The refined objects are converted into a shape file of road. Various challenges faced along the way and some useful observations and algorithmic strategies to achieve the end goal have been discussed in this paper.
机译:高分辨率卫星图像的道路提取是一项挑战的任务。许多人采用不同方法和技术的许多人都尝试了这个问题,许多人已经在很大程度上解决了它。本文的新颖性是达到提供最终产品的最终目标,该目的可用于产生像车辆检测,车辆计数和确定道路上车辆尺寸等语义有意义的应用。本文采用深神经网络提出了一种高分辨率多光谱卫星图像中的道路描绘方法,以产生道路二进制掩模。使用图像处理技术进一步处理包括对象的二进制掩模。虽然减少了归类为道路的非道路对象,但使用诸如对象大小和形状的对象属性。精细对象被转换为道路的形状文件。本文讨论了沿途面临的各种挑战以及实现最终目标的一些有用的观测和算法策略。

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