The Impact of Semi-Supervised Learning on Line Segment Detection
- URL: http://arxiv.org/abs/2411.04596v1
- Date: Thu, 07 Nov 2024 10:28:11 GMT
- Title: The Impact of Semi-Supervised Learning on Line Segment Detection
- Authors: Johanna Engman, Karl Åström, Magnus Oskarsson,
- Abstract summary: We present a method for line segment detection in images, based on a semi-supervised framework.
We show comparable results to fully supervised methods.
Our method is to our knowledge the first to target line detection using modern state-of-the-art methodologies for semi-supervised learning.
- Score: 11.636855122196323
- License:
- Abstract: In this paper we present a method for line segment detection in images, based on a semi-supervised framework. Leveraging the use of a consistency loss based on differently augmented and perturbed unlabeled images with a small amount of labeled data, we show comparable results to fully supervised methods. This opens up application scenarios where annotation is difficult or expensive, and for domain specific adaptation of models. We are specifically interested in real-time and online applications, and investigate small and efficient learning backbones. Our method is to our knowledge the first to target line detection using modern state-of-the-art methodologies for semi-supervised learning. We test the method on both standard benchmarks and domain specific scenarios for forestry applications, showing the tractability of the proposed method.
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