<<<This is a pre-acceptance version, please, go through Pattern Recognition Journal on Sciencedirect to read the final version>>>. Edge detection is the basis of many computer vision applications. State of the art predominantly relies on deep learning with two decisive factors: dataset content and network's architecture. Most of the publicly available datasets are not curated for edge detection tasks. Here, we offer a solution to this constraint. First, we argue that edges, contours and boundaries, despite their overlaps, are three distinct visual features requiring separate benchmark datasets. To this end, we present a new dataset of edges. Second, we propose a novel architecture, termed Dense Extreme Inception Network for Edge Detection (DexiNed), that can be trained from scratch without any pre-trained weights. DexiNed outperforms other algorithms in the presented dataset. It also generalizes well to other datasets without any fine-tuning. The higher quality of DexiNed is also perceptually evident thanks to the sharper and finer edges it outputs.
Dense Extreme Inception Network for Edge Detection
A new dataset and Dense Extreme Inception Network for Edge Detection (DexiNed) architecture are introduced, showcasing superior edge detection performance and generalization compared to existing methods.
- Year
- 2021
- Venue
- arXiv 2021
- Authors
- 4
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2112.02250v2ARXIV-DEFAULT
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