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Eco-friendly weeding through precise detection of growing points via efficient multi-branch convolutional neural networks

Dewa Made Sri Arsa, Talha Ilyas, Seok-Hwan Park, Okjae Won, Hyongsuk Kim

2023Computers and Electronics in Agriculture18 citationsDOIOpen Access PDF

Abstract

Weeds can give negative effects for plant growth, and effectively controlling them is a significant challenge. Traditional methods, such as herbicides, may not be environmentally friendly, and manual weeding can be costly. The laser-based weeding is a potentially alternative way of weeding in an environmentally friendly way. Growing point detection and their pin-point striking would be more desirable in the laser-based weeding technology. In this study, we propose an encoder–decoder-based convolutional neural network with a dual decoder branch to detect the growing point of weeds. The decoder incorporates spatial and channel attention, as well as a novel activation gate mechanism to control the attention. We also present a simple yet effective strategy for combining the outputs of the decoder branches. The proposed method was tested on a real field dataset containing various growing stages of weeds and was compared to state-of-the-art methods using point-based metrics. The results show that the proposed method outperforms existing approaches, with a detection rate of 0.8505, precision of 0.8641, miss rate of 0.1391, RMSE of 22.68, and MAE of 17.95. The implementation code can be accessed at https://github.com/dewamsa/WGPdetection.git.

Topics & Concepts

Convolutional neural networkComputer scienceEncoderField (mathematics)Code (set theory)Environmentally friendlyArtificial intelligencePoint (geometry)Pattern recognition (psychology)MathematicsEcologyOperating systemPure mathematicsSet (abstract data type)Programming languageGeometryBiologyGreenhouse Technology and Climate ControlSmart Agriculture and AILeaf Properties and Growth Measurement