从基于无人机的RGB图像定位农作物中心

Yuhao Chen, Javier Ribera, C. Boomsma, E. Delp
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引用次数: 12

摘要

本文提出了一种在无人机(UAV)图像中寻找农作物位置的方法。寻找植物的位置是推导和追踪每种植物表型性状的关键步骤。我们描述了估算田间作物种植位置的一些初步工作。我们通过将像素分类为植物中心或非植物中心来解决这个问题。我们使用多实例学习(MIL)来处理训练数据中植物中心标注的模糊性。然后对分类结果进行后处理,以估计作物的确切位置。对该方法进行了实验评价,结果表明,该方法的总体查准率和查全率分别达到66%和64%。
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Locating Crop Plant Centers from UAV-Based RGB Imagery
In this paper we propose a method to find the location of crop plants in Unmanned Aerial Vehicle (UAV) imagery. Finding the location of plants is a crucial step to derive and track phenotypic traits for each plant. We describe some initial work in estimating field crop plant locations. We approach the problem by classifying pixels as a plant center or a non plant center. We use Multiple Instance Learning (MIL) to handle the ambiguity of plant center labeling in training data. The classification results are then post-processed to estimate the exact location of the crop plant. Experimental evaluation is conducted to evaluate the method and the result achieved an overall precision and recall of 66% and 64%, respectively.
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