Crop stem detection and tracking for precision hoeing using deep learning
Idioma
EN
Article de revue
Este ítem está publicado en
Computers and Electronics in Agriculture. 2022-01, vol. 192, p. 106606
Resumen en inglés
Developing alternatives to the chemical weeding process usually carried out in vegetable crop farming is necessary in order to reach a more sustainable agriculture. However, a precise mechanical weeding requires specific ...Leer más >
Developing alternatives to the chemical weeding process usually carried out in vegetable crop farming is necessary in order to reach a more sustainable agriculture. However, a precise mechanical weeding requires specific sensors and advanced computer vision algorithms to process crop and weed discrimination in real-time.
In this paper we propose an algorithm able to detect, locate, and track the stem position of crops in images which is suitable for precision actions in vegetable fields such as mechanical hoeing within crop rows. The algorithm is twofold: (i) a deep neural network for object detection is first used to detect crop stems in individual RGB images and then (ii) an aggregation algorithm further refines the detections taking advantage of the temporal redundancy in consecutive frames.
We evaluated the pipeline on images of maize and bean crops at an early stage of development, acquired in field conditions with a camera embedded in an experimental mechanical weeding system. We reported F1-scores of respectively 94.74% and 93.82% with a location accuracy around 0.7 cm when compared with human annotation. Moreover, this pipeline can operate in real-time on an embedded computer consuming as little power as 30 W.< Leer menos
Palabras clave en inglés
Precision agriculture
Deep learning
Neural network
Object detection
Tracking algorithm
Proyecto ANR
Bloc-outil et Imagerie de Précision pour le Binage Intra-rang Précoce - ANR-17-ROSE-0001
Centros de investigación