论文标题

使用半监督学习的杂草密度和分配估计

Weed Density and Distribution Estimation for Precision Agriculture using Semi-Supervised Learning

论文作者

Shorewala, Shantam, Ashfaque, Armaan, R, Sidharth, Verma, Ujjwal

论文摘要

杂草的不受控制会严重影响农作物的产量和质量。除草剂去除除草剂的无限制使用会改变生物多样性并引起环境污染。取而代之的是,识别有杂草的区域可以有助于对这些区域的选择性化学处理。分析农场图像的进展导致了鉴定杂草植物的解决方案。但是,这些方法中的大多数是基于有监督的学习方法,该方法需要大量手动注释的图像。结果,由于种植种植种类繁多的种类,这些有监督的方法在经济上是不可行的。在本文中,我们提出了一种基于深度学习的半监督方法,以使用仅从自主机器人中获取的有限颜色图像对农田的杂草密度和分布进行稳健估算。这种杂草的密度和分布在特定于特定地点的杂草管理系统中很有用,用于使用自主机器人选择性治疗感染区域。在这项工作中,首先使用基于卷积的神经网络(CNN)的无监督分段来鉴定含有农作物和杂草的前景植被像素。随后,使用微调的CNN确定了被杂草感染的区域,从而消除了设计手工制作的特征的需求。该方法在不同的农作物/杂草种类的两个数据集中进行了验证(1)作物杂草图像数据集(CWFID),该数据集由胡萝卜植物图像和(2)甜菜糖数据集组成。所提出的方法能够将最大召回杂草的区域定位为0.99,并估计杂草密度,最大精度为82.13%。因此,所提出的方法被证明可以推广到不同的植物物种,而无需广泛标记的数据。

Uncontrolled growth of weeds can severely affect the crop yield and quality. Unrestricted use of herbicide for weed removal alters biodiversity and cause environmental pollution. Instead, identifying weed-infested regions can aid selective chemical treatment of these regions. Advances in analyzing farm images have resulted in solutions to identify weed plants. However, a majority of these approaches are based on supervised learning methods which requires huge amount of manually annotated images. As a result, these supervised approaches are economically infeasible for the individual farmer because of the wide variety of plant species being cultivated. In this paper, we propose a deep learning-based semi-supervised approach for robust estimation of weed density and distribution across farmlands using only limited color images acquired from autonomous robots. This weed density and distribution can be useful in a site-specific weed management system for selective treatment of infected areas using autonomous robots. In this work, the foreground vegetation pixels containing crops and weeds are first identified using a Convolutional Neural Network (CNN) based unsupervised segmentation. Subsequently, the weed infected regions are identified using a fine-tuned CNN, eliminating the need for designing hand-crafted features. The approach is validated on two datasets of different crop/weed species (1) Crop Weed Field Image Dataset (CWFID), which consists of carrot plant images and the (2) Sugar Beets dataset. The proposed method is able to localize weed-infested regions a maximum recall of 0.99 and estimate weed density with a maximum accuracy of 82.13%. Hence, the proposed approach is shown to generalize to different plant species without the need for extensive labeled data.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源