Weakly Supervised Ephemeral Gully Detection In Remote Sensing Images Using Vision Language Models
Seyed Mohamad Ali Tousi, Ramy Farag, John A. Lory, G. N. DeSouza

TL;DR
This paper introduces a novel weakly supervised method leveraging Vision Language Models and a teacher-student framework to detect ephemeral gullies in remote sensing images, significantly reducing manual labeling effort.
Contribution
It presents the first weakly supervised pipeline for ephemeral gully detection and provides a new large-scale dataset for semi-supervised remote sensing analysis.
Findings
Superior performance over baseline models
Effective use of noisy labels from VLMs
First publicly available dataset for this task
Abstract
Among soil erosion problems, Ephemeral Gullies are one of the most concerning phenomena occurring in agricultural fields. Their short temporal cycles increase the difficulty in automatically detecting them using classical computer vision approaches and remote sensing. Also, due to scarcity of and the difficulty in producing accurate labeled data, automatic detection of ephemeral gullies using Machine Learning is limited to zero-shot approaches which are hard to implement. To overcome these challenges, we present the first weakly supervised pipeline for detection of ephemeral gullies. Our method relies on remote sensing and uses Vision Language Models (VLMs) to drastically reduce the labor-intensive task of manual labeling. In order to achieve that, the method exploits: 1) the knowledge embedded in the VLM's pretraining; 2) a teacher-student model where the teacher learns from noisy…
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Taxonomy
TopicsSoil erosion and sediment transport · Groundwater and Watershed Analysis · Smart Agriculture and AI
