The evolution of smaller, faster processors and cheaper digital storage mechanisms across the last 4-5 decades has vastly increased the opportunity to integrate intelligent technologies in a wide range of practical environments to address a broad spectrum of tasks. One exciting application domain for such technologies is precision agriculture, where the ability to integrate on-board machine vision with data-driven actuation means that farmers can make decisions about crop care and harvesting at the level of the individual plant rather than the whole field. This makes sense both economically and environmentally. However, the key driver for this capability is fast and robust machine vision -- typically driven by machine learning (ML) solutions and dependent on accurate modelling. One critical challenge is that the bulk of ML-based vision research considers only metrics that evaluate the accuracy of object detection and do not assess practical factors. This paper introduces three metrics that highlight different aspects relevant for real-world deployment of precision weeding and demonstrates their utility through experimental results.
翻译:在过去4至5年中,较小、更快捷的加工器和更廉价的数字储存机制的演变大大增加了将智能技术纳入广泛的实用环境以完成广泛任务的机会。这种技术的一个令人兴奋的应用领域是精准农业,在这个领域,将机上愿景与数据驱动的动力相结合的能力意味着农民可以在单个工厂而不是整个田地一级就作物护理和收获作出决定。这在经济和环境上都是有意义的。然而,这一能力的关键驱动因素是快速和稳健的机器愿景 -- -- 通常由机器学习(ML)解决方案驱动,并依赖于准确的建模。一个重大挑战是,基于ML的愿景研究大部分只考虑评价物体探测准确度和不评估实际因素的指标。本文提出了三个衡量标准,这些衡量标准突出了与实际部署精密的杂草的不同方面,并通过实验结果表明其效用。