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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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arxiv.org/abs/2112.02250v2ARXIV-DEFAULT
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Abstract

<<<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.

Authors

4