Abstract:
Endoscopic images captured under low-light enclosed intestinal environment usually have poor visibility (manifested as uneven illumination and noise), affecting the work ...Show MoreMetadata
Abstract:
Endoscopic images captured under low-light enclosed intestinal environment usually have poor visibility (manifested as uneven illumination and noise), affecting the work efficiency of physicians and the accuracy of lesion detection. To improve the image quality, the literature has reported many low-light image enhancement (LIE) methods. However, most methods do not perform well in handling the low-light endoscopic image enhancement (LEIE) task, usually bringing additional artifacts or amplifying noise. In this paper, we propose a novel deep pyramid enhancement network (DPENet) to enhance endoscopic images from both global and local perspectives. Specifically, considering the uneven illumination of endoscopic images, DPENet utilizes an image pyramid framework with three parallel branches to explore and integrate both global and local features at different scales. To suppress noise, DPENet sets multiple scale-space feature extraction blocks (SFEBs) in each branch. SFEB consists of a contextual feature extraction module (CFEM) and a spatial residual attention module (SRAM). CFEM mines contextual information to help the network understand semantic information while suppress the isolated noise. SRAM leverages the spatial attention mechanism to help the network adaptively focus on dim regions. Experimental results on a public dataset and our collected dataset show that DPENet is competent for the LEIE task with promising results, and outperforms 9 state-of-the-art LIE methods in both qualitative and quantitative aspects.
Published in: IEEE Transactions on Circuits and Systems for Video Technology ( Volume: 34, Issue: 5, May 2024)
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- IEEE Keywords
- Index Terms
- Image Enhancement ,
- Endoscopic Images ,
- Low-light Image ,
- Low-light Image Enhancement ,
- Image Quality ,
- Local Features ,
- Contextual Information ,
- Global Features ,
- Semantic Information ,
- Attention Module ,
- Spatial Attention ,
- Residual Module ,
- Spatial Attention Module ,
- Image Pyramid ,
- Uneven Illumination ,
- Image Enhancement Methods ,
- Contralateral ,
- Convolution ,
- Input Image ,
- Feature Maps ,
- High-quality Images ,
- Attention Block ,
- Reflection Component ,
- Specular Reflection ,
- Lower Branch ,
- Natural Images ,
- L2 Loss ,
- Learning-based Methods ,
- Noise Region ,
- Image Pairs
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Image Enhancement ,
- Endoscopic Images ,
- Low-light Image ,
- Low-light Image Enhancement ,
- Image Quality ,
- Local Features ,
- Contextual Information ,
- Global Features ,
- Semantic Information ,
- Attention Module ,
- Spatial Attention ,
- Residual Module ,
- Spatial Attention Module ,
- Image Pyramid ,
- Uneven Illumination ,
- Image Enhancement Methods ,
- Contralateral ,
- Convolution ,
- Input Image ,
- Feature Maps ,
- High-quality Images ,
- Attention Block ,
- Reflection Component ,
- Specular Reflection ,
- Lower Branch ,
- Natural Images ,
- L2 Loss ,
- Learning-based Methods ,
- Noise Region ,
- Image Pairs
- Author Keywords