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Generative Smoke Removal

About

In minimally invasive surgery, the use of tissue dissection tools causes smoke, which inevitably degrades the image quality. This could reduce the visibility of the operation field for surgeons and introduces errors for the computer vision algorithms used in surgical navigation systems. In this paper, we propose a novel approach for computational smoke removal using supervised image-to-image translation. We demonstrate that straightforward application of existing generative algorithms allows removing smoke but decreases image quality and introduces synthetic noise (grid-structure). Thus, we propose to solve this issue by modification of GAN's architecture and adding perceptual image quality metric to the loss function. Obtained results demonstrate that proposed method efficiently removes smoke as well as preserves perceptually sufficient image quality.

Oleksii Sidorov, Congcong Wang, Faouzi Alaya Cheikh• 2019

Related benchmarks

TaskDatasetResultRank
Surgical Smoke RemovalDesmokeData (test)
PSNR24.857
30
Surgical Smoke RemovalLSD3K (test)
PSNR24.544
20
Instrument SegmentationDe-Smoking dataset (test)
IoU77.78
11
Stereo Depth EstimationDe-Smoking dataset (test)
MAE (mm)59.44
11
Image DesmokingPublic Surgical Paired Dataset
PSNR19.74
9
Surgical DesmokingDe-Smoking Cholecystectomy
SSIM76
9
Surgical DesmokingDe-Smoking Prostatectomy
SSIM66
9
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