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Sub-scene Target Detection and Recognition Using Deep Learning Convolution Neural Networks

机译:深度学习卷积神经网络的次场景目标检测与识别

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Sub-scene recognition algorithm based on super resolution along with scene dependent neural network model and sub-scene dependent target detection for automating object information extraction is proposed. This work deals with large number of challenges possessed by classification problems. Some of the challenges in this problem are the low resolution satellite images, diverse pattern of each sub-scene causing the low level learning for classification and plethora of distinct object classes present in each sub-scene causes low accuracy of object detection. Objective of this paper presents an image super resolution technique for rectifying problems posed by low resolution images with color density variations of chromaticity coordinates. To eliminate the problem of diverse patterns, have divided various land cover types into separate groups based on maximum mixed fraction among these groups and corresponding sub-scene recognition disparate model parameters are used to recognize various scenes. To increase the accuracy for object detection has developed a sub-scene dependent Neural Network model for extracting the target/anomaly of object information.
机译:提出了一种基于超分辨率的子场景识别算法,结合场景依赖神经网络模型和子场景依赖目标检测技术,实现了目标信息的自动提取。这项工作解决了分类问题带来的大量挑战。该问题中的一些挑战是低分辨率的卫星图像,每个子场景的不同模式导致分类的低级学习,并且每个子场景中存在大量不同的对象类别,导致对象检测的准确性较低。本文的目的是提出一种图像超分辨率技术,以纠正由色度坐标的色密度变化引起的低分辨率图像带来的问题。为了消除各种模式的问题,已基于这些组之间的最大混合比例将各种土地覆盖类型划分为不同的组,并使用相应的子场景识别不同的模型参数来识别各种场景。为了提高对象检测的准确性,开发了依赖于场景的神经网络模型,用于提取对象信息的目标/异常。

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