Multi-frame Feature Aggregation for Real-time Instrument Segmentation in
Endoscopic Video
- URL: http://arxiv.org/abs/2011.08752v2
- Date: Mon, 26 Jul 2021 00:39:27 GMT
- Title: Multi-frame Feature Aggregation for Real-time Instrument Segmentation in
Endoscopic Video
- Authors: Shan Lin, Fangbo Qin, Haonan Peng, Randall A. Bly, Kris S. Moe, Blake
Hannaford
- Abstract summary: We propose a novel Multi-frame Feature Aggregation (MFFA) module to aggregate video frame features temporally and spatially.
We also develop a method that can randomly synthesize a surgical frame sequence from a single labeled frame to assist network training.
- Score: 11.100734994959419
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep learning-based methods have achieved promising results on surgical
instrument segmentation. However, the high computation cost may limit the
application of deep models to time-sensitive tasks such as online surgical
video analysis for robotic-assisted surgery. Moreover, current methods may
still suffer from challenging conditions in surgical images such as various
lighting conditions and the presence of blood. We propose a novel Multi-frame
Feature Aggregation (MFFA) module to aggregate video frame features temporally
and spatially in a recurrent mode. By distributing the computation load of deep
feature extraction over sequential frames, we can use a lightweight encoder to
reduce the computation costs at each time step. Moreover, public surgical
videos usually are not labeled frame by frame, so we develop a method that can
randomly synthesize a surgical frame sequence from a single labeled frame to
assist network training. We demonstrate that our approach achieves superior
performance to corresponding deeper segmentation models on two public surgery
datasets.
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