Weed Density and Distribution Estimation for Precision Agriculture using Semi-Supervised Learning
Shantam Shorewala, Armaan Ashfaque, Sidharth R, Ujjwal Verma

TL;DR
This paper presents a semi-supervised deep learning method for estimating weed density and distribution in farmlands using limited labeled images, enabling targeted weed management with autonomous robots.
Contribution
It introduces a novel semi-supervised approach combining CNN-based segmentation and fine-tuning to accurately identify weed-infested regions without extensive labeled data.
Findings
Maximum weed localization recall of 0.99
Weed density estimation accuracy of 82.13%
Effective across different crop and weed species
Abstract
Uncontrolled growth of weeds can severely affect the crop yield and quality. Unrestricted use of herbicide for weed removal alters biodiversity and cause environmental pollution. Instead, identifying weed-infested regions can aid selective chemical treatment of these regions. Advances in analyzing farm images have resulted in solutions to identify weed plants. However, a majority of these approaches are based on supervised learning methods which requires huge amount of manually annotated images. As a result, these supervised approaches are economically infeasible for the individual farmer because of the wide variety of plant species being cultivated. In this paper, we propose a deep learning-based semi-supervised approach for robust estimation of weed density and distribution across farmlands using only limited color images acquired from autonomous robots. This weed density and…
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