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Self-Supervised Video Desmoking for Laparoscopic Surgery

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Due to the difficulty of collecting real paired data, most existing desmoking methods train the models by synthesizing smoke, generalizing poorly to real surgical scenarios. Although a few works have explored single-image real-world desmoking in unpaired learning manners, they still encounter challenges in handling dense smoke. In this work, we address these issues together by introducing the self-supervised surgery video desmoking (SelfSVD). On the one hand, we observe that the frame captured before the activation of high-energy devices is generally clear (named pre-smoke frame, PS frame), thus it can serve as supervision for other smoky frames, making real-world self-supervised video desmoking practically feasible. On the other hand, in order to enhance the desmoking performance, we further feed the valuable information from PS frame into models, where a masking strategy and a regularization term are presented to avoid trivial solutions. In addition, we construct a real surgery video dataset for desmoking, which covers a variety of smoky scenes. Extensive experiments on the dataset show that our SelfSVD can remove smoke more effectively and efficiently while recovering more photo-realistic details than the state-of-the-art methods. The dataset, codes, and pre-trained models are available at \url{https://github.com/ZcsrenlongZ/SelfSVD}.

Renlong Wu, Zhilu Zhang, Shuohao Zhang, Longfei Gou, Haobin Chen, Lei Zhang, Hao Chen, Wangmeng Zuo• 2024

Related benchmarks

TaskDatasetResultRank
Surgical Smoke RemovalDesmokeData (test)
PSNR19.73
30
Stereo Depth EstimationDe-Smoking dataset (test)
MAE (mm)53.03
11
Instrument SegmentationDe-Smoking dataset (test)
IoU79.3
11
Surgical DesmokingReal-world surgical dataset
SSEQ11.868
10
Surgical DesmokingDe-Smoking Cholecystectomy
SSIM83
9
Surgical DesmokingDe-Smoking Prostatectomy
SSIM67
9
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