EdgeSRIE: A hybrid deep learning framework for real-time speckle reduction and image enhancement on portable ultrasound systems
Journal:
arXiv
Published Date:
Jul 5, 2025
Abstract
Speckle patterns in ultrasound images often obscure anatomical details,
leading to diagnostic uncertainty. Recently, various deep learning (DL)-based
techniques have been introduced to effectively suppress speckle; however, their
high computational costs pose challenges for low-resource devices, such as
portable ultrasound systems. To address this issue, EdgeSRIE, which is a
lightweight hybrid DL framework for real-time speckle reduction and image
enhancement in portable ultrasound imaging, is introduced. The proposed
framework consists of two main branches: an unsupervised despeckling branch,
which is trained by minimizing a loss function between speckled images, and a
deblurring branch, which restores blurred images to sharp images. For hardware
implementation, the trained network is quantized to 8-bit integer precision and
deployed on a low-resource system-on-chip (SoC) with limited power consumption.
In the performance evaluation with phantom and in vivo analyses, EdgeSRIE
achieved the highest contrast-to-noise ratio (CNR) and average gradient
magnitude (AGM) compared with the other baselines (different 2-rule-based
methods and other 4-DL-based methods). Furthermore, EdgeSRIE enabled real-time
inference at over 60 frames per second while satisfying computational
requirements (< 20K parameters) on actual portable ultrasound hardware. These
results demonstrated the feasibility of EdgeSRIE for real-time, high-quality
ultrasound imaging in resource-limited environments.