基于深度卷积神经网络的卫星图像特征检测

Vaibhav Gupta, Vaibhav Aggarwal, Parakram Singh Chauhan, K. Sharma, Neetu Sharma
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引用次数: 0

摘要

本文研究了利用深度卷积神经网络对卫星图像进行特征检测的实现方法。本文的目的是对不同类别的卫星图像进行准确的分割。我们的实现方法仅限于CNN对多光谱数据处理的自适应。我们还对培训目标和培训管道进行了说明和开发,我们实施上述模型的方法在提交的419个条目中获得了第三名。所实现的模型的精度可以与获得前2名的方法相媲美,但不太可能这种卫星图像分析不依赖于复杂的组装方案,因此可以轻松地用于自动特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Detection for Satellite Imagery Using Deep-Convolutional Neural Network
This paper deals with the implementation approach for the feature detection for the images obtained from satellites using deep convolutional neural network. The aim of this paper is to accurately segment different images of different classes of the satellite imagery. Our method for the implementation is confined to the adaptation of CNN for multispectral data processing. We have also stated and developed several changes for the training objective and the training pipeline our method of implementation of the above model secured 3rd place from 419 entries that were submitted. The accuracy of the model implemented can be compared to the methods that secured the first 2 places in the competition, but unlikely this satellite image analysis does not depend on the complex assembling schemes so can be utilized in the automatic featuring at ease.
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