Multi Spectral Image Retrieval in Remote Sensing Big Data using Fast Recurrent Convolutional Neural Network

B. Sathiyaprasad, B. S. Kumar
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引用次数: 2

Abstract

The retrieval of Multispectral image is vast area in machine learning which has input data which is not static as per consideration. They has disadvantages in communication, memory in remote sensing area and compression over the lossy data which is very important, still it cannot be avoided for unnecessary objects. Because of the intricacies (spatial, ghastly, unique information sources, and fleeting irregularities) in on the web and time-arrangement multispectral picture investigation, there is a high event likelihood in varieties of otherworldly groups from an information stream, which decays the experiments in classification (in terms of accuracy) else can change as inefficient. For handling these problems with big data, deep learning is specifically efficient. By all accounts there is an extraordinary possibility for misusing the possibilities of such complex big data. The complex of retrieving remote sensed data with higher resolution in terms of effectiveness and accuracy, this research proposed architecture of neural network in feature extractionofimages collected from satellite using fast recurrent convolutional neural network (FRCNN). Here FRCNN is designed for retrieving the image collected by satellite without any loss of data and to identify objects and accurately locate them. Using the accuracy, precision, recall and F1 score the relevance of the results are computed.
基于快速递归卷积神经网络的遥感大数据多光谱图像检索
多光谱图像的检索是机器学习中一个非常广阔的领域,因为多光谱图像的输入数据不是静态的。它们在通信、遥感区域的存储和对有损数据的压缩等方面都有缺点,这是非常重要的,但对于不必要的目标,它们仍然无法避免。由于网络和时间安排的多光谱图像调查的复杂性(空间、可怕、独特的信息源和短暂的不规则性),信息流中的各种超凡脱俗的群体存在很高的事件可能性,这削弱了分类实验(就准确性而言),否则可能会变得低效。对于用大数据处理这些问题,深度学习特别有效。大家都说,滥用如此复杂的大数据的可能性非常大。针对高分辨率遥感数据检索在有效性和准确性方面的复杂性,本研究提出了基于快速递归卷积神经网络(FRCNN)的卫星图像特征提取神经网络架构。在这里,FRCNN的设计目的是在不丢失数据的情况下检索卫星采集的图像,识别物体并准确定位。使用正确率、精密度、召回率和F1分数来计算结果的相关性。
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