Machine vision systems in precision agriculture for crop farming
Machine vision for precision agriculture has attracted considerable research interest in
recent years. The aim of this paper is to review the most recent work in the application of …
recent years. The aim of this paper is to review the most recent work in the application of …
Weed detection using deep learning: A systematic literature review
Weeds are one of the most harmful agricultural pests that have a significant impact on crops.
Weeds are responsible for higher production costs due to crop waste and have a significant …
Weeds are responsible for higher production costs due to crop waste and have a significant …
Towards weeds identification assistance through transfer learning
Reducing the use of pesticides through selective spraying is an important component
towards a more sustainable computer-assisted agriculture. Weed identification at early …
towards a more sustainable computer-assisted agriculture. Weed identification at early …
CNN feature based graph convolutional network for weed and crop recognition in smart farming
H Jiang, C Zhang, Y Qiao, Z Zhang, W Zhang… - … and electronics in …, 2020 - Elsevier
Weeding is an effective way to increase crop yields. Reliable and accurate weed recognition
is a prerequisite for achieving high-precision site-specific weed control in precision …
is a prerequisite for achieving high-precision site-specific weed control in precision …
Deep learning-based visual recognition of rumex for robotic precision farming
In this paper we address the problem of recognising the Broad-leaved dock (Rumex
obtusifolius L.) in grasslands from high-resolution 2D images. We discuss and present the …
obtusifolius L.) in grasslands from high-resolution 2D images. We discuss and present the …
An open source workflow for weed map** in native grassland using unmanned aerial vehicle: using Rumex obtusifolius as a case study
OHY Lam, M Dogotari, M Prüm… - European Journal of …, 2021 - Taylor & Francis
Weed control is one of the biggest challenges in organic farms or nature reserve areas
where mass spraying is prohibited. Recent advancements in remote sensing and airborne …
where mass spraying is prohibited. Recent advancements in remote sensing and airborne …
Classification of weed using machine learning techniques: a review—challenges, current and future potential techniques
Weed detection and classification are considered one of the most vital tools in identifying
and recognizing plants in agricultural fields. Recently, machine learning techniques have …
and recognizing plants in agricultural fields. Recently, machine learning techniques have …
AgroAVNET for crops and weeds classification: A step forward in automatic farming
Convolutional Neural networks have endeavored to solve various problems in different
fields such as industries, medication, automation, etc. Among these areas, automatic farming …
fields such as industries, medication, automation, etc. Among these areas, automatic farming …
RumexWeeds: A grassland dataset for agricultural robotics
Computer vision can lead toward more sustainable agricultural production by enabling
robotic precision agriculture. Vision‐equipped robots are being deployed in the fields to take …
robotic precision agriculture. Vision‐equipped robots are being deployed in the fields to take …
Combing modified Grabcut, K-means clustering and sparse representation classification for weed recognition in wheat field
S Zhang, W Huang, Z Wang - Neurocomputing, 2021 - Elsevier
Weeding is beneficial to the growth of the crops in field. At present, weeding in China mainly
relies on chemical herbicide spraying on a large area, which leads to environmental …
relies on chemical herbicide spraying on a large area, which leads to environmental …