Litcius/Paper detail

Exploring Segment-Level Semantics for Online Phase Recognition From Surgical Videos

Xinpeng Ding, Xiaomeng Li

2022IEEE Transactions on Medical Imaging55 citationsDOI

Abstract

Automatic surgical phase recognition plays a vital role in robot-assisted surgeries. Existing methods ignored a pivotal problem that surgical phases should be classified by learning segment-level semantics instead of solely relying on frame-wise information. This paper presents a segment-attentive hierarchical consistency network (SAHC) for surgical phase recognition from videos. The key idea is to extract hierarchical high-level semantic-consistent segments and use them to refine the erroneous predictions caused by ambiguous frames. To achieve it, we design a temporal hierarchical network to generate hierarchical high-level segments. Then, we introduce a hierarchical segment-frame attention module to capture relations between the low-level frames and high-level segments. By regularizing the predictions of frames and their corresponding segments via a consistency loss, the network can generate semantic-consistent segments and then rectify the misclassified predictions caused by ambiguous low-level frames. We validate SAHC on two public surgical video datasets, i.e., the M2CAI16 challenge dataset and the Cholec80 dataset. Experimental results show that our method outperforms previous state-of-the-arts and ablation studies prove the effectiveness of our proposed modules. Our code has been released at: https://github.com/xmed-lab/SAHC.

Topics & Concepts

Computer scienceSemantics (computer science)Consistency (knowledge bases)Artificial intelligenceKey (lock)Frame (networking)Code (set theory)Hierarchical database modelPattern recognition (psychology)Natural language processingMachine learningData miningSet (abstract data type)Programming languageComputer securityTelecommunicationsSurgical Simulation and TrainingCardiac, Anesthesia and Surgical OutcomesPelvic floor disorders treatments