Login / Signup

Dictionary learning technique enhances signal in LED-based photoacoustic imaging.

Parastoo FarniaEbrahim NajafzadehAli HaririSaeedeh Navaei LavasaniBahador MakkiabadiAlireza AhmadianJesse V Jokerst
Published in: Biomedical optics express (2020)
There has been growing interest in low-cost light sources such as light-emitting diodes (LEDs) as an excitation source in photoacoustic imaging. However, LED-based photoacoustic imaging is limited by low signal due to low energy per pulse-the signal is easily buried in noise leading to low quality images. Here, we describe a signal de-noising approach for LED-based photoacoustic signals based on dictionary learning with an alternating direction method of multipliers. This signal enhancement method is then followed by a simple reconstruction approach delay and sum. This approach leads to sparse representation of the main components of the signal. The main improvements of this approach are a 38% higher contrast ratio and a 43% higher axial resolution versus the averaging method but with only 4% of the frames and consequently 49.5% less computational time. This makes it an appropriate option for real-time LED-based photoacoustic imaging.
Keyphrases
  • fluorescence imaging
  • high resolution
  • magnetic resonance
  • deep learning
  • machine learning
  • drinking water
  • quantum dots
  • neural network