A Deep Active Contour Model for Delineating Glacier Calving Fronts
- URL: http://arxiv.org/abs/2307.03461v1
- Date: Fri, 7 Jul 2023 08:45:46 GMT
- Title: A Deep Active Contour Model for Delineating Glacier Calving Fronts
- Authors: Konrad Heidler, Lichao Mou, Erik Loebel, Mirko Scheinert, S\'ebastien
Lef\`evre, Xiao Xiang Zhu
- Abstract summary: Recent studies have shown that combining segmentation with edge detection can improve the accuracy of calving front detectors.
We propose a model for explicit contour detection that does not incorporate any dense predictions as intermediate steps.
The proposed approach, called Charting Outlines by Recurrent Adaptation'' (COBRA), combines Convolutional Neural Networks (CNNs) for feature extraction and active contour models for the delineation.
- Score: 17.061463565692456
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Choosing how to encode a real-world problem as a machine learning task is an
important design decision in machine learning. The task of glacier calving
front modeling has often been approached as a semantic segmentation task.
Recent studies have shown that combining segmentation with edge detection can
improve the accuracy of calving front detectors. Building on this observation,
we completely rephrase the task as a contour tracing problem and propose a
model for explicit contour detection that does not incorporate any dense
predictions as intermediate steps. The proposed approach, called ``Charting
Outlines by Recurrent Adaptation'' (COBRA), combines Convolutional Neural
Networks (CNNs) for feature extraction and active contour models for the
delineation. By training and evaluating on several large-scale datasets of
Greenland's outlet glaciers, we show that this approach indeed outperforms the
aforementioned methods based on segmentation and edge-detection. Finally, we
demonstrate that explicit contour detection has benefits over pixel-wise
methods when quantifying the models' prediction uncertainties. The project page
containing the code and animated model predictions can be found at
\url{https://khdlr.github.io/COBRA/}.
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