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Convolutional Neural Network for Convolution of Aerial Survey Images

机译:卷积神经网络用于空中调查图像卷积

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The article presents a neural network for convolution of aerial survey images to search and localize objects. When developing a convolutional neural network for convolution of aerial survey images, it is advisable to use the power of cloud technologies, by deploying the CNN on a cloud server. In this article, to construct a convolutional neural network with a full-scale network strategy, we used ResNet, of which architecture is bas. For traditional convolutional functions, neural networks in the process of convolution are characterized by a local receptive field, which can lead to the generation of local features. Encoding long-range contextual information is not performed properly, and the resulting local features can lead to significant potential disagreements between the features under study, which correspond to pixels with the same tags, resulting in inconsistencies within the class. pixels, eventually leading to low recognition efficiency. To solve this problem, the article improved the convolutional neural network for convolution of aerial survey images.
机译:本文介绍了用于搜索和本地化对象的空中调查图像的神经网络。在开发卷积神经网络以进行航空测量图像的卷积时,建议通过在云服务器上部署CNN来使用云技术的力量。在本文中,为了构建具有满量程网络策略的卷积神经网络,我们使用reset,其中架构是bas。对于传统的卷积功能,卷积过程中的神经网络的特征在于局部接收领域,这可能导致局部特征的产生。编码远程上下文信息不是正确执行的,并且产生的本地特征可能导致研究的特征之间的显着潜在分歧,其对应于具有相同标签的像素,导致该类内部不一致。像素,最终导致识别效率低。为了解决这个问题,文章改进了空中调查图像卷积的卷积神经网络。

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