Image Semantic Segmentation Based on High-Resolution Networks for Monitoring Agricultural Vegetation

V. Ganchenko, V. Starovoitov, Xiangtao Zheng
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引用次数: 1

Abstract

In the article, recognition of state of agricultural vegetation from aerial photographs at various spatial resolutions was considered. Proposed approach is based on a semantic segmentation using convolutional neural networks. Two variants of High-Resolution network architecture (HRNet) are described and used. These neural networks were trained and applied to aerial images of agricultural fields. In our experiments, accuracy of four land classes recognition (soil, healthy vegetation, diseased vegetation and other objects) was about 93-94%.
基于高分辨率网络的农业植被监测图像语义分割
本文研究了不同空间分辨率下航拍农业植被状态的识别问题。提出了一种基于卷积神经网络的语义分割方法。描述并使用了高分辨率网络体系结构(HRNet)的两种变体。这些神经网络经过训练并应用于农业领域的航空图像。在我们的实验中,四种土地类别识别(土壤、健康植被、病害植被和其他物体)的准确率约为93-94%。
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