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首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >DEEP CONVOLUTIONAL NEURAL NETWORKS FOR WEED DETECTION IN AGRICULTURAL CROPS USING OPTICAL AERIAL IMAGES
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DEEP CONVOLUTIONAL NEURAL NETWORKS FOR WEED DETECTION IN AGRICULTURAL CROPS USING OPTICAL AERIAL IMAGES

机译:使用光空中图像的农业作物杂草检测深度卷积神经网络

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The presence of weeds in agricultural crops has been one of the problems of greatest interest in recent years as they consume natural resources and negatively affect the agricultural process. For this purpose, a model has been implemented to segment weed in aerial images. The proposed model relies on DeepLabv3 architecture trained upon patches extracted from high-resolution aerial imagery. The dataset employed consisted in 5 high-resolution images that describes a sugar beet agricultural field in Germany. SegNet and U-Net architectures were selected for comparison purposes. Our results demonstrate that balancing of data, together with a greater spatial context leads better results with DeepLabv3 achieving up to 0.89 and 0.81 in terms of AUC and F1-score, respectively.
机译:杂草在农业作物中的存在是近年来最令人兴趣的问题之一,因为它们消耗自然资源并对农业过程产生负面影响。为此目的,模型已经实施到空中图像中的杂草。所提出的模型依赖于从高分辨率空中图像提取的贴片上训练的Deeplabv3架构。所用的数据集包括在5个高分辨率图像中,描述了德国的甜菜农业领域。选择SEGNET和U-NET架构以进行比较目的。我们的结果表明,数据平衡与更大的空间上下文一起导致Deeplabv3分别在AUC和F1分数方面的DeePlabv3实现了达到0.89和0.81。

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