Drivable Agricultural Road Region Detection Based on Pixel-Level Segmentation with Contextual Representation Augmentation

IF 3.3 2区 农林科学 Q1 AGRONOMY
Yefeng Sun, Liang Gong, Wei Zhang, Bishu Gao, Yanming Li, Chengliang Liu
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引用次数: 0

Abstract

Drivable area detection is crucial for the autonomous navigation of agricultural robots. However, semi-structured agricultural roads are generally not marked with lanes and their boundaries are ambiguous, which impedes the accurate segmentation of drivable areas and consequently paralyzes the robots. This paper proposes a deep learning network model for realizing high-resolution segmentation of agricultural roads by leveraging contextual representations to augment road objectness. The backbone adopts HRNet to extract high-resolution road features in parallel at multiple scales. To strengthen the relationship between pixels and corresponding object regions, we use object-contextual representations (OCR) to augment the feature representations of pixels. Finally, a differentiable binarization (DB) decision head is used to perform threshold-adaptive segmentation for road boundaries. To quantify the performance of our method, we used an agricultural semi-structured road dataset and conducted experiments. The experimental results show that the mIoU reaches 97.85%, and the Boundary IoU achieves 90.88%. Both the segmentation accuracy and the boundary quality outperform the existing methods, which shows the tailored segmentation networks with contextual representations are beneficial to improving the detection accuracy of the semi-structured drivable areas in agricultural scene.
基于上下文表示增强的像素级分割的可行驶农业道路区域检测
可驾驶区域检测是农业机器人自主导航的关键。然而,半结构化的农业道路通常没有车道标记,其边界模糊,这阻碍了对可行驶区域的准确分割,从而使机器人瘫痪。本文提出了一种深度学习网络模型,通过利用上下文表示来增强道路对象,实现农业道路的高分辨率分割。主干采用HRNet在多尺度上并行提取高分辨率道路特征。为了加强像素和相应对象区域之间的关系,我们使用对象上下文表示(OCR)来增强像素的特征表示。最后,利用可微分二值化(DB)决策头对道路边界进行阈值自适应分割。为了量化我们方法的性能,我们使用了一个农业半结构化道路数据集并进行了实验。实验结果表明,mIoU达到97.85%,Boundary IoU达到90.88%。分割精度和边界质量均优于现有方法,表明基于上下文表示的定制化分割网络有利于提高农业场景半结构化可行驶区域的检测精度。
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来源期刊
Agriculture-Basel
Agriculture-Basel Agricultural and Biological Sciences-Food Science
CiteScore
4.90
自引率
13.90%
发文量
1793
审稿时长
11 weeks
期刊介绍: Agriculture (ISSN 2077-0472) is an international and cross-disciplinary scholarly and scientific open access journal on the science of cultivating the soil, growing, harvesting crops, and raising livestock. We will aim to look at production, processing, marketing and use of foods, fibers, plants and animals. The journal Agriculturewill publish reviews, regular research papers, communications and short notes, and there is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.
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