Transferring learned patterns from ground-based field imagery to predict UAV-based imagery for crop and weed semantic segmentation in precision crop farming
Junfeng Gao, Wenzhi Liao, David Nuyttens, Peter Lootens, Erik, Alexandersson, Jan Pieters

TL;DR
This paper presents a deep learning model that transfers knowledge from ground-based images to aerial UAV images for crop and weed segmentation, improving site-specific weed management in precision farming.
Contribution
The novel deep convolutional network enables cross-platform weed and crop segmentation, using only ground-based training data to predict aerial imagery results.
Findings
Segmentation IOU for crop, weeds, soil: 0.744, 0.577, 0.979 (field)
Segmentation IOU for aerial images: 0.596, 0.407, 0.875
Herbicide savings up to 90% at 1.78 x 1.78 cm2 resolution
Abstract
Weed and crop segmentation is becoming an increasingly integral part of precision farming that leverages the current computer vision and deep learning technologies. Research has been extensively carried out based on images captured with a camera from various platforms. Unmanned aerial vehicles (UAVs) and ground-based vehicles including agricultural robots are the two popular platforms for data collection in fields. They all contribute to site-specific weed management (SSWM) to maintain crop yield. Currently, the data from these two platforms is processed separately, though sharing the same semantic objects (weed and crop). In our paper, we have developed a deep convolutional network that enables to predict both field and aerial images from UAVs for weed segmentation and mapping with only field images provided in the training phase. The network learning process is visualized by feature…
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Taxonomy
TopicsSmart Agriculture and AI · Remote Sensing in Agriculture · Plant Disease Management Techniques
