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Detection of Bird Nests during Mechanical Weeding by Incremental Background Modeling and Visual Saliency

机译:通过增量背景建模和视觉显着性检测机械除草过程中的鸟巢

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Mechanical weeding is an important tool in organic farming. However, the use of mechanical weeding in conventional agriculture is increasing, due to public demands to lower the use of pesticides and an increased number of pesticide-resistant weeds. Ground nesting birds are highly susceptible to farming operations, like mechanical weeding, which may destroy the nests and reduce the survival of chicks and incubating females. This problem has limited focus within agricultural engineering. However, when the number of machines increases, destruction of nests will have an impact on various species. It is therefore necessary to explore and develop new technology in order to avoid these negative ethical consequences. This paper presents a vision-based approach to automated ground nest detection. The algorithm is based on the fusion of visual saliency, which mimics human attention, and incremental background modeling, which enables foreground detection with moving cameras. The algorithm achieves a good detection rate, as it detects 28 of 30 nests at an average distance of 3.8 m, with a true positive rate of 0.75.
机译:机械除草是有机农业中的重要工具。但是,由于公众要求减少农药的使用和增加抗农药性杂草的数量,传统农业中机械除草的使用正在增加。地面筑巢的鸟类极易受到农耕作业的影响,例如机械除草,这可能会破坏巢穴并降低雏鸡和成年雌性的存活率。这个问题在农业工程领域的关注有限。但是,当机器数量增加时,巢的破坏将对各种物种产生影响。因此,有必要探索和开发新技术以避免这些负面的道德后果。本文提出了一种基于视觉的自动地面巢穴检测方法。该算法基于模仿人类注意力的视觉显着性与增量背景建模的融合,增量背景建模可通过移动摄像机进行前景检测。该算法实现了良好的检测率,因为它以平均3.8 m的平均距离检测到30个巢中的28个,真实阳性率为0.75。

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