论文标题
探索弱光图像中显着对象检测的图像增强
Exploring Image Enhancement for Salient Object Detection in Low Light Images
论文作者
论文摘要
在非均匀照明环境中捕获的低光图像通常会因场景深度和相应的环境灯而降级。这种降解导致降解图像模态的严重对象信息丢失,这使得显着对象检测由于造影剂低和人造光的影响而更具挑战性。但是,现有的显着对象检测模型是基于以下假设:在足够的亮度环境下捕获图像,这在现实世界中是不切实际的。在这项工作中,我们提出了一种图像增强方法,以促进弱光图像中的显着对象检测。提出的模型将物理照明模型直接嵌入深度神经网络中,以描述低光图像的降解,其中环境光被视为点的变化,并随着局部内容而变化。此外,利用非本地块层来捕获对象与其本地邻里偏爱区域的局部内容的差异。为了进行定量评估,我们使用像素级的人体标记的地面真相注释构建一个低光图像数据集,并在四个公共数据集和我们的基准数据集上报告有希望的结果。
Low light images captured in a non-uniform illumination environment usually are degraded with the scene depth and the corresponding environment lights. This degradation results in severe object information loss in the degraded image modality, which makes the salient object detection more challenging due to low contrast property and artificial light influence. However, existing salient object detection models are developed based on the assumption that the images are captured under a sufficient brightness environment, which is impractical in real-world scenarios. In this work, we propose an image enhancement approach to facilitate the salient object detection in low light images. The proposed model directly embeds the physical lighting model into the deep neural network to describe the degradation of low light images, in which the environment light is treated as a point-wise variate and changes with local content. Moreover, a Non-Local-Block Layer is utilized to capture the difference of local content of an object against its local neighborhood favoring regions. To quantitative evaluation, we construct a low light Images dataset with pixel-level human-labeled ground-truth annotations and report promising results on four public datasets and our benchmark dataset.