Region of Interest based Medical Image Compression
Journal:
arXiv
Published Date:
Jan 6, 2025
Abstract
The vast volume of medical image data necessitates efficient compression
techniques to support remote healthcare services. This paper explores Region of
Interest (ROI) coding to address the balance between compression rate and image
quality. By leveraging UNET segmentation on the Brats 2020 dataset, we
accurately identify tumor regions, which are critical for diagnosis. These
regions are then subjected to High Efficiency Video Coding (HEVC) for
compression, enhancing compression rates while preserving essential diagnostic
information. This approach ensures that critical image regions maintain their
quality, while non-essential areas are compressed more. Our method optimizes
storage space and transmission bandwidth, meeting the demands of telemedicine
and large-scale medical imaging. Through this technique, we provide a robust
solution that maintains the integrity of vital data and improves the efficiency
of medical image handling.