蒲公英杂草中心的卷积神经网络网格细胞检测

Ibrahim Babiker, Jiacai Liao, W. Xie
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引用次数: 0

摘要

本文提出了一种利用多年生黑麦草中蒲公英杂草(Taraxacum officinale)植物中心部分信息进行检测的新方法。原始区域建议方法从蒲公英杂草的原始鸟瞰图中生成建议。包含蒲公英杂草叶子的提案被采纳,植物中心被标记为一个基于最“突出”叶子的新概念的点。样本被划分为网格单元,包含标记点的单元被认为是真值单元。径向图及其逆图是基于真值单元的空间位置生成的。利用基于这些映射的新型损失函数,训练一个全卷积网络来检测正真值细胞。使用相对较小的数据集,在地图上计算回归损失的损失函数产生的模型性能明显优于没有回归损失的损失函数。此外,有些错误仅仅是自动检测到另一个“突出”叶的中心的结果。此外,与分割模型的比较结果显示,与训练计算成本高的推理模型相比,分割模型在仅检测植物中心方面具有一些优势。
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Grid Cell Detection of Dandelion Weed Centers via Convolutional Neural Network
This paper presents a novel method for detecting dandelion weed (Taraxacum officinale) plant centers in perennial ryegrass using partial information gathered only from plant leaves. A primitive region proposal method generates proposals from original birds-eye view images of whole dandelion weeds in grass. The proposals containing dandelion weed leaves are taken and plant centers are labeled with a point based on the novel concept of the most “prominent” leaf. The samples are divided into a grid of cells and the cell containing the labeled point is considered the truth cell. A radial map and its inverse are generated based on the spatial location of the cells w.r.t. the truth cell. A fully convolutional network is trained to detect the positive truth cell using novel loss functions based on these maps. Using a relatively small dataset, the loss functions with the terms that compute regression loss on the maps yield significantly better model performance than those without. In addition, some errors are simply the result of the center of an alternate “prominent” leaf being automatically detected. Further, the comparison results with segmentation models reveal some advantages in detecting only plant centers as opposed to training computationally costly inference models.
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