NightLab: A Dual-level Architecture with Hardness Detection for Segmentation at Night
The semantic segmentation of nighttime scenes is a challenging problem that is key to impactful applications like self-driving cars. Yet, it has received little attention compared to its daytime counterpart. In this paper, we propose NightLab, a novel nighttime segmentation framework that leverages...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
12.04.2022
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Subjects | |
Online Access | Get full text |
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Summary: | The semantic segmentation of nighttime scenes is a challenging problem that
is key to impactful applications like self-driving cars. Yet, it has received
little attention compared to its daytime counterpart. In this paper, we propose
NightLab, a novel nighttime segmentation framework that leverages multiple deep
learning models imbued with night-aware features to yield State-of-The-Art
(SoTA) performance on multiple night segmentation benchmarks. Notably, NightLab
contains models at two levels of granularity, i.e. image and regional, and each
level is composed of light adaptation and segmentation modules. Given a
nighttime image, the image level model provides an initial segmentation
estimate while, in parallel, a hardness detection module identifies regions and
their surrounding context that need further analysis. A regional level model
focuses on these difficult regions to provide a significantly improved
segmentation. All the models in NightLab are trained end-to-end using a set of
proposed night-aware losses without handcrafted heuristics. Extensive
experiments on the NightCity and BDD100K datasets show NightLab achieves SoTA
performance compared to concurrent methods. |
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DOI: | 10.48550/arxiv.2204.05538 |