Deep-CNN based Robotic Multi-Class Under-Canopy Weed Control in Precision Farming

12/28/2021
by   Yayun Du, et al.
2

Smart weeding systems to perform plant-specific operations can contribute to the sustainability of agriculture and the environment. Despite monumental advances in autonomous robotic technologies for precision weed management in recent years, work on under-canopy weeding in fields is yet to be realized. A prerequisite of such systems is reliable detection and classification of weeds to avoid mistakenly spraying and, thus, damaging the surrounding plants. Real-time multi-class weed identification enables species-specific treatment of weeds and significantly reduces the amount of herbicide use. Here, our first contribution is the first adequately large realistic image dataset AIWeeds (one/multiple kinds of weeds in one image), a library of about 10,000 annotated images of flax, and the 14 most common weeds in fields and gardens taken from 20 different locations in North Dakota, California, and Central China. Second, we provide a full pipeline from model training with maximum efficiency to deploying the TensorRT-optimized model onto a single board computer. Based on AIWeeds and the pipeline, we present a baseline for classification performance using five benchmark CNN models. Among them, MobileNetV2, with both the shortest inference time and lowest memory consumption, is the qualified candidate for real-time applications. Finally, we deploy MobileNetV2 onto our own compact autonomous robot SAMBot for real-time weed detection. The 90% test accuracy realized in previously unseen scenes in flax fields (with a row spacing of 0.2-0.3 m), with crops and weeds, distortion, blur, and shadows, is a milestone towards precision weed control in the real world. We have publicly released the dataset and code to generate the results at <https://github.com/StructuresComp/Multi-class-Weed-Classification>.

READ FULL TEXT

page 2

page 4

page 5

page 6

page 7

research
10/09/2018

DeepWeeds: A Multiclass Weed Species Image Dataset for Deep Learning

Robotic weed control has seen increased research in the past decade with...
research
09/20/2017

Real-time Semantic Segmentation of Crop and Weed for Precision Agriculture Robots Leveraging Background Knowledge in CNNs

Precision farming robots, which target to reduce the amount of herbicide...
research
02/01/2019

Dataset Culling: Towards Efficient Training Of Distillation-Based Domain Specific Models

Real-time CNN based object detection models for applications like survei...
research
08/16/2023

SkinDistilViT: Lightweight Vision Transformer for Skin Lesion Classification

Skin cancer is a treatable disease if discovered early. We provide a pro...
research
11/23/2018

Defect Detection from UAV Images based on Region-Based CNNs

With the wide applications of Unmanned Aerial Vehicle (UAV) in engineeri...
research
08/11/2022

Goodness of Fit Metrics for Multi-class Predictor

The multi-class prediction had gained popularity over recent years. Thus...
research
02/24/2016

Automatic Moth Detection from Trap Images for Pest Management

Monitoring the number of insect pests is a crucial component in pheromon...

Please sign up or login with your details

Forgot password? Click here to reset