Temporal Propagation of Asymmetric Feature Pyramid for Surgical Scene Segmentation
Journal:
arXiv
Published Date:
Apr 18, 2025
Abstract
Surgical scene segmentation is crucial for robot-assisted laparoscopic
surgery understanding. Current approaches face two challenges: (i) static image
limitations including ambiguous local feature similarities and fine-grained
structural details, and (ii) dynamic video complexities arising from rapid
instrument motion and persistent visual occlusions. While existing methods
mainly focus on spatial feature extraction, they fundamentally overlook
temporal dependencies in surgical video streams. To address this, we present
temporal asymmetric feature propagation network, a bidirectional attention
architecture enabling cross-frame feature propagation. The proposed method
contains a temporal query propagator that integrates multi-directional
consistency constraints to enhance frame-specific feature representation, and
an aggregated asymmetric feature pyramid module that preserves discriminative
features for anatomical structures and surgical instruments. Our framework
uniquely enables both temporal guidance and contextual reasoning for surgical
scene understanding. Comprehensive evaluations on two public benchmarks show
the proposed method outperforms the current SOTA methods by a large margin,
with +16.4\% mIoU on EndoVis2018 and +3.3\% mAP on Endoscapes2023. The code
will be publicly available after paper acceptance.