A cross-domain challenge with panoptic segmentation in agriculture

Michael Halstead, Patrick Zimmer, Chris McCool
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Abstract

Automation in agriculture is a growing area of research with fundamental societal importance as farmers are expected to produce more and better crop with fewer resources. A key enabling factor is robotic vision techniques allowing us to sense and then interact with the environment. A limiting factor for these robotic vision systems is their cross-domain performance, that is, their ability to operate in a large range of environments. In this paper, we propose the use of auxiliary tasks to enhance cross-domain performance without the need for extra data. We perform experiments using four datasets (two in a glasshouse and two in arable farmland) for four cross-domain evaluations. These experiments demonstrate the effectiveness of our auxiliary tasks to improve network generalisability. In glasshouse experiments, our approach improves the panoptic quality of things from 10.4 to 18.5 and in arable farmland from 16.0 to 27.5; where a score of 100 is the best. To further evaluate the generalisability of our approach, we perform an ablation study using the large Crop and Weed dataset (CAW) where we improve cross-domain performance (panoptic quality of things) from 12.8 to 30.6 for the CAW dataset to our novel WeedAI dataset, and 21.2 to 36.0 from CAW to the other arable farmland dataset. Although our proposed approaches considerably improve cross-domain performance we still do not generally outperform in-domain trained systems. This highlights the potential room for improvement in this area and the importance of cross-domain research for robotic vision systems.
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农业全景细分的跨领域挑战
农业自动化是一个不断增长的研究领域,对社会具有根本性的重要意义,因为农民们需要用更少的资源生产出更多更好的作物。一个关键的有利因素是机器人视觉技术,它使我们能够感知环境,然后与环境互动。这些机器人视觉系统的一个限制因素是它们的跨域性能,即它们在大范围环境中运行的能力。在本文中,我们提出使用辅助任务来提高跨域性能,而无需额外的数据。我们使用四个数据集(两个在温室中,两个在可耕农田中)进行了四次跨领域评估实验。这些实验证明了我们的辅助任务在提高网络通用性方面的有效性。在玻璃温室实验中,我们的方法将事物的全景质量从 10.4 分提高到 18.5 分,在可耕农田中从 16.0 分提高到 27.5 分;其中 100 分为最佳。为了进一步评估我们的方法的通用性,我们使用大型作物和杂草数据集(CAW)进行了一项消融研究,结果显示,从 CAW 数据集到我们的新型 WeedAI 数据集,我们的跨域性能(事物的全景质量)从 12.8 提高到 30.6,从 CAW 到其他可耕农田数据集,我们的跨域性能从 21.2 提高到 36.0。尽管我们提出的方法大大提高了跨域性能,但总体而言,我们仍然没有超越域内训练系统。这凸显了这一领域的潜在改进空间,以及跨域研究对机器人视觉系统的重要性。
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