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Detection of Military Targets from Satellite Images using Deep Convolutional Neural Networks

机译:使用深度卷积神经网络从卫星图像中检测军事目标

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Due to the varying size, orientation, and background of images in the defense sector, it is a daunting task to discern and distinguish the military targets in them. Multitudes of solutions have been proposed in this arena, yet there is a significant need for much better and flawless outputs. In this chapter, we expound on a two-level solution–Edge Boxes and Convolutional Neural Network (CNN) for the detection of targets in satellite imagery, Super resolution of the image using Dense-skip-connections. In the first level, the military objects are detected from the satellite image using Edge Boxes. In satellite imagery, the edge data of targets contains very prominent and concise attributes. The traditionally engineered features such as Histogram of Oriented Gradients, Hough transform and Gabor feature do not work well for huge datasets. However, the Edge Boxes technique generates contours around the target objects and discards the remaining. The output of this level is fed to the second level, wherein, the proposed targets undergo image super resolution. The presented deep learning model tends to inherently learn an end-to-end mapping between images of lower resolution and higher resolution. This level can be portrayed as one which takes a low-resolution input image and constructs an up-sampled high-resolution image as the output. Unlike traditional methods (sparse coding based method, bicubic method) that handle each component separately, this method aims to optimize all the layers at once. Furthermore, for assuaging the vanishing gradient problem that is common to very deep networks, Dense-skip-connections are employed. These enable the building of shorter paths directly within multiple layers. Though the proposed model has a light weighted structure, it exhibits state-of-the-art restoration quality.
机译:由于国防部门图像的大小,方向和背景各不相同,因此辨别和区分其中的军事目标是一项艰巨的任务。在这个领域已经提出了许多解决方案,但是仍然强烈需要更好,更完美的输出。在本章中,我们将阐述一个两级解决方案-边缘盒和卷积神经网络(CNN),用于检测卫星图像中的目标,并使用Dense-skip-connections实现图像的超分辨率。在第一级中,使用“边缘盒”从卫星图像中检测军事目标。在卫星图像中,目标的边缘数据包含非常突出和简洁的属性。传统设计的功能(如定向直方图,霍夫变换和Gabor功能)不适用于庞大的数据集。但是,“边缘盒”技术会在目标对象周围生成轮廓,并丢弃其余的轮廓。该等级的输出被馈送到第二等级,其中,所提出的目标经历图像超分辨率。提出的深度学习模型倾向于固有地学习低分辨率和高分辨率图像之间的端到端映射。可以将此级别描述为获取低分辨率输入图像并构造上采样的高分辨率图像作为输出的级别。与分别处理每个组件的传统方法(基于稀疏编码的方法,双三次方法)不同,该方法旨在一次优化所有层。此外,为了解决非常深的网络常见的消失梯度问题,采用了密集跳过连接。这些使直接在多层内构建较短的路径成为可能。尽管所提出的模型具有轻量化的结构,但仍具有最新的修复质量。

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