WeedMap: A large-scale semantic weed mapping framework using aerial multispectral imaging and deep neural network for precision farming
Inkyu Sa, Marija Popovic, Raghav Khanna, Zetao Chen and, Philipp Lottes, Frank Liebisch, Juan Nieto, Cyrill Stachniss and, Achim Walter, Roland Siegwart

TL;DR
We introduce WeedMap, a deep learning framework that accurately maps weeds using multispectral UAV imagery, overcoming challenges of high-altitude image resolution and alignment to enhance precision farming.
Contribution
We propose a novel sliding window approach for large-scale multispectral weed mapping with a deep neural network, significantly improving segmentation accuracy over RGB-based models.
Findings
Achieved higher AUC scores with 9-channel input compared to RGB baseline.
Demonstrated effectiveness of the sliding window approach for large orthomosaic processing.
Provided a new annotated dataset for weed mapping research.
Abstract
We present a novel weed segmentation and mapping framework that processes multispectral images obtained from an unmanned aerial vehicle (UAV) using a deep neural network (DNN). Most studies on crop/weed semantic segmentation only consider single images for processing and classification. Images taken by UAVs often cover only a few hundred square meters with either color only or color and near-infrared (NIR) channels. Computing a single large and accurate vegetation map (e.g., crop/weed) using a DNN is non-trivial due to difficulties arising from: (1) limited ground sample distances (GSDs) in high-altitude datasets, (2) sacrificed resolution resulting from downsampling high-fidelity images, and (3) multispectral image alignment. To address these issues, we adopt a stand sliding window approach that operates on only small portions of multispectral orthomosaic maps (tiles), which are…
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Taxonomy
TopicsSmart Agriculture and AI · Remote Sensing in Agriculture · Remote Sensing and LiDAR Applications
