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Crop and Weeds Classification for Precision Agriculture Using Context-Independent Pixel-Wise Segmentation

机译:使用上下文无关的像素明智分割的精准农业作物和杂草分类

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Precision agriculture is gaining increasing attention because of the possible reduction of agricultural inputs (e.g., fertilizers and pesticides) that can be obtained by using hightech equipment, including robots. In this paper, we focus on an agricultural robotics system that addresses the weeding problem by means of selective spraying or mechanical removal of the detected weeds. In particular, we describe a deep learning based method to allow a robot to perform an accurate weed/crop classification using a sequence of two Convolutional Neural Networks (CNNs) applied to RGB images. The first network, based on an encoder-decoder segmentation architecture, performs a pixelwise, plant-type agnostic, segmentation between vegetation and soil that enables to extract a set of connected blobs representing plant instances. We show that such network can be trained also using external, ready to use pixel-wise labeled data sets coming from different contexts. Each plant is hence classified between crop and weeds by using the second network. Quantitative experimental results, obtained on real world data, demonstrate that the proposed approach can achieve good classification results also on challenging images.
机译:由于可能会减少使用高科技设备(包括机器人)获得的农业投入(例如化肥和杀虫剂),因此精准农业受到越来越多的关注。在本文中,我们专注于一种农业机器人系统,该系统通过选择性喷洒或机械去除检测到的杂草来解决杂草问题。特别是,我们描述了一种基于深度学习的方法,该方法允许机器人使用应用于RGB图像的两个卷积神经网络(CNN)序列执行准确的杂草/作物分类。基于编码器-解码器分割架构的第一个网络在植被和土壤之间执行逐像素,植物类型不可知的分割,从而能够提取代表植物实例的一组连接斑点。我们表明,也可以使用外部,可以随时使用来自不同上下文的按像素标记的数据集来训练此类网络。因此,通过使用第二网络,将每种植物分类在作物和杂草之间。在现实世界的数据上获得的定量实验结果表明,所提出的方法在具有挑战性的图像上也可以实现良好的分类结果。

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