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Main Authors: Fernández-Rodríguez, Marcos, Silva, Bruno, Queirós, Sandro, Torres, Helena R., Oliveira, Bruno, Morais, Pedro, Buschle, Lukas R., Correia-Pinto, Jorge, Lima, Estevão, Vilaça, João L.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2403.10216
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author Fernández-Rodríguez, Marcos
Silva, Bruno
Queirós, Sandro
Torres, Helena R.
Oliveira, Bruno
Morais, Pedro
Buschle, Lukas R.
Correia-Pinto, Jorge
Lima, Estevão
Vilaça, João L.
author_facet Fernández-Rodríguez, Marcos
Silva, Bruno
Queirós, Sandro
Torres, Helena R.
Oliveira, Bruno
Morais, Pedro
Buschle, Lukas R.
Correia-Pinto, Jorge
Lima, Estevão
Vilaça, João L.
contents Surgical instrument segmentation in laparoscopy is essential for computer-assisted surgical systems. Despite the Deep Learning progress in recent years, the dynamic setting of laparoscopic surgery still presents challenges for precise segmentation. The nnU-Net framework excelled in semantic segmentation analyzing single frames without temporal information. The framework's ease of use, including its ability to be automatically configured, and its low expertise requirements, have made it a popular base framework for comparisons. Optical flow (OF) is a tool commonly used in video tasks to estimate motion and represent it in a single frame, containing temporal information. This work seeks to employ OF maps as an additional input to the nnU-Net architecture to improve its performance in the surgical instrument segmentation task, taking advantage of the fact that instruments are the main moving objects in the surgical field. With this new input, the temporal component would be indirectly added without modifying the architecture. Using CholecSeg8k dataset, three different representations of movement were estimated and used as new inputs, comparing them with a baseline model. Results showed that the use of OF maps improves the detection of classes with high movement, even when these are scarce in the dataset. To further improve performance, future work may focus on implementing other OF-preserving augmentations.
format Preprint
id arxiv_https___arxiv_org_abs_2403_10216
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Exploring Optical Flow Inclusion into nnU-Net Framework for Surgical Instrument Segmentation
Fernández-Rodríguez, Marcos
Silva, Bruno
Queirós, Sandro
Torres, Helena R.
Oliveira, Bruno
Morais, Pedro
Buschle, Lukas R.
Correia-Pinto, Jorge
Lima, Estevão
Vilaça, João L.
Computer Vision and Pattern Recognition
Artificial Intelligence
Surgical instrument segmentation in laparoscopy is essential for computer-assisted surgical systems. Despite the Deep Learning progress in recent years, the dynamic setting of laparoscopic surgery still presents challenges for precise segmentation. The nnU-Net framework excelled in semantic segmentation analyzing single frames without temporal information. The framework's ease of use, including its ability to be automatically configured, and its low expertise requirements, have made it a popular base framework for comparisons. Optical flow (OF) is a tool commonly used in video tasks to estimate motion and represent it in a single frame, containing temporal information. This work seeks to employ OF maps as an additional input to the nnU-Net architecture to improve its performance in the surgical instrument segmentation task, taking advantage of the fact that instruments are the main moving objects in the surgical field. With this new input, the temporal component would be indirectly added without modifying the architecture. Using CholecSeg8k dataset, three different representations of movement were estimated and used as new inputs, comparing them with a baseline model. Results showed that the use of OF maps improves the detection of classes with high movement, even when these are scarce in the dataset. To further improve performance, future work may focus on implementing other OF-preserving augmentations.
title Exploring Optical Flow Inclusion into nnU-Net Framework for Surgical Instrument Segmentation
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2403.10216