Create

Design Project Gallery

Project Search
Filter projects by keyword, program, course, or submission year.

Search Fields

Surgical Activity Recognition Using TD-CNN-LSTM Model

Team: SAR-RARP

Project Description:

Activity recognition is one of the most essential and challenging tasks in computer vision. The development of a precise activity recognition algorithm on a surgical dataset is particularly pertinent and beneficial, since it could contribute to the guidance of a surgery robot. This project aims to utilize deep learning methods to recognize surgical activity actions. We implemented a Time Distributed CNN-LSTM model. This model was trained end-to-end on the SAR-RARP50 dataset, which consists of video segments recorded during 50 Robot-Assisted Radical Prostatectomies (RARP). The preliminary results on a subset of the data yielded an accuracy of over 90% for 4-class and 8-class classification.

Student Team Members

Nanthini Narayanan
Sam Lander Capocyan

Course Faculty

Project Mentors, Sponsors, and Partners

Dr. Adam Charles
Jayanta Dey