Deep Learning with unsupervised data labeling for weeds detection on UAV images
M.Dian. Bah, Adel Hafiane, Raphael Canals

TL;DR
This paper introduces a fully automatic deep learning method for weeds detection in UAV images, reducing the need for manual annotation by automatically generating training data from crop line detection.
Contribution
It presents a novel unsupervised training data collection approach for CNNs in weed detection, improving efficiency and reducing annotation effort.
Findings
Accuracy gaps of 1.5% in spinach fields
Accuracy gaps of 6% in bean fields
Comparable results to supervised methods
Abstract
In modern agriculture, usually weeds control consists in spraying herbicides all over the agricultural field. This practice involves significant waste and cost of herbicide for farmers and environmental pollution. One way to reduce the cost and environmental impact is to allocate the right doses of herbicide at the right place and at the right time (Precision Agriculture). Nowadays, Unmanned Aerial Vehicle (UAV) is becoming an interesting acquisition system for weeds localization and management due to its ability to obtain the images of the entire agricultural field with a very high spatial resolution and at low cost. Despite the important advances in UAV acquisition systems, automatic weeds detection remains a challenging problem because of its strong similarity with the crops. Recently Deep Learning approach has shown impressive results in different complex classification problem.…
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Taxonomy
TopicsSmart Agriculture and AI · Remote Sensing in Agriculture
