BrightVAE: Luminosity Enhancement in Underexposed Endoscopic Images
Abstract
The enhancement of image luminosity is especially critical in endoscopic
images. Underexposed endoscopic images often suffer from reduced contrast and
uneven brightness, significantly impacting diagnostic accuracy and treatment
planning. Internal body imaging is challenging due to uneven lighting and
shadowy regions. Enhancing such images is essential since precise image
interpretation is crucial for patient outcomes. In this paper, we introduce
BrightVAE, an architecture based on the hierarchical Vector Quantized
Variational Autoencoder (hierarchical VQ-VAE) tailored explicitly for enhancing
luminosity in low-light endoscopic images. Our architecture is meticulously
designed to tackle the unique challenges inherent in endoscopic imaging, such
as significant variations in illumination and obscured details due to poor
lighting conditions. The proposed model emphasizes advanced feature extraction
from three distinct viewpoints-incorporating various receptive fields, skip
connections, and feature attentions to robustly enhance image quality and
support more accurate medical diagnoses. Through rigorous experimental
analysis, we demonstrate the effectiveness of these techniques in enhancing
low-light endoscopic images. To evaluate the performance of our architecture,
we employ three widely recognized metrics-SSIM, PSNR, and LPIPS-specifically on
Endo4IE dataset, which consists of endoscopic images. We evaluated our method
using the Endo4IE dataset, which consists exclusively of endoscopic images, and
showed significant advancements over the state-of-the-art methods for enhancing
luminosity in endoscopic imaging.
Authors
Koohestani F; Nabizadeh Z; Karimi N; Shirani S; Samavi S