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RSSM-Net: Remote Sensing Image Scene Classification Based on Multi-Objective Neural Architecture Search

机译:RSSM-Net:基于多目标神经架构搜索的遥感图像场景分类

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The deep learning (DL)-based scene classification methods have been obtained the remarkable attention for the high spatial resolution remote sensing (HRS) imagery. However, from one aspect, the existing DL methods in HRS image scene classification are usually the variations of the natural image processing methods and often the inherent network structures; from another aspect, the strenuous and significant efforts have been devoted to the design of relevant network structures by human experts. In this paper, learning from the natural evolution, the deep neural network is expected to be globally evolved by the machine for automatically adapting the structure of the HRS imagery, a multi-objective neural architecture search based HRS image scene classification method is proposed (RSSM-Net). The two objectives of minimizing a classification error and the computational complexity have been simultaneously optimized through the evolutionary multi-objective method, the competitive neural architectures in a Pareto solution set are then obtained. The effectiveness is proved by the experiment of the UC Merced dataset with several networks designed by human experts.
机译:基于深度学习(DL)的场景分类方法已经获得了高空间分辨率遥感(HRS)图像的显着关注。然而,从一个方面,HRS图像场景分类中的现有DL方法通常是自然图像处理方法的变化,通常是固有的网络结构;从另一方面,剧烈和重大努力已经致力于人类专家设计相关网络结构。在本文中,从自然演变中学习,深度神经网络预计通过机器自动演化的机器用于自动调整HRS图像的结构,提出了一种基于多目标神经结构搜索的HRS图像场景分类方法(RSSM -网)。通过进化的多目标方法同时优化最小化分类误差和计算复杂性的两个目标,然后获得帕累托解决方案集中的竞争神经结构。通过使用人力专家设计的多个网络的UC梅先型数据集进行了实验证明了该有效性。

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