TL;DR
This paper introduces PIG, a novel method that combines prompt images guidance with unsupervised domain adaptation to improve night-time scene parsing accuracy across multiple datasets.
Contribution
It proposes a Night-Focused Network and fusion strategies to leverage prompt images, enhancing UDA performance in night scene parsing.
Findings
PIG improves night scene parsing accuracy across four datasets.
NFNet effectively learns night-specific features from target and prompt images.
Fusion strategies help balance classes with varying domain similarities.
Abstract
Night-time scene parsing aims to extract pixel-level semantic information in night images, aiding downstream tasks in understanding scene object distribution. Due to limited labeled night image datasets, unsupervised domain adaptation (UDA) has become the predominant method for studying night scenes. UDA typically relies on paired day-night image pairs to guide adaptation, but this approach hampers dataset construction and restricts generalization across night scenes in different datasets. Moreover, UDA, focusing on network architecture and training strategies, faces difficulties in handling classes with few domain similarities. In this paper, we leverage Prompt Images Guidance (PIG) to enhance UDA with supplementary night knowledge. We propose a Night-Focused Network (NFNet) to learn night-specific features from both target domain images and prompt images. To generate high-quality…
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