A searchable list of some of my publications is below. You can also access my publications from the following sites.
My ORCID is
https://orcid.org/0000-0002-6236-2969
Publications:
1.
Aneeq Zia, Daniel Castro, Irfan Essa
Fine-tuning Deep Architectures for Surgical Tool Detection Proceedings Article
In: Workshop and Challenges on Modeling and Monitoring of Computer Assisted Interventions (M2CAI), Held in Conjunction with International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI), Athens, Greece, 2016.
@inproceedings{2016-Zia-FDASTD,
title = {Fine-tuning Deep Architectures for Surgical Tool Detection},
author = {Aneeq Zia and Daniel Castro and Irfan Essa},
url = {http://www.cc.gatech.edu/cpl/projects/deepm2cai/
https://www.cc.gatech.edu/cpl/projects/deepm2cai/paper.pdf},
year = {2016},
date = {2016-10-01},
urldate = {2016-10-01},
booktitle = {Workshop and Challenges on Modeling and Monitoring of Computer Assisted Interventions (M2CAI), Held in Conjunction with International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI)},
address = {Athens, Greece},
abstract = {Understanding surgical workflow has been a key concern of the medical research community. One of the main advantages of surgical workflow detection is real time operating room (OR) scheduling. For hospitals, each minute of OR time is important in order to reduce cost and increase patient throughput. Traditional approaches in this field generally tackle the video analysis using hand crafted video features to facilitate the tool detection. Recently, Twinanda et al presented a CNN architecture ’EndoNet’ which outperformed previous methods for both surgical tool detection and surgical phase detection. Given the recent success of these networks, we present a study of various architectures coupled with a submission to the M2CAI Surgical Tool Detection challenge. We achieved a top-3 result for the M2CAI competition with a mAP of 37.6.
},
keywords = {activity assessment, computer vision, MICCAI, surgical training},
pubstate = {published},
tppubtype = {inproceedings}
}
Understanding surgical workflow has been a key concern of the medical research community. One of the main advantages of surgical workflow detection is real time operating room (OR) scheduling. For hospitals, each minute of OR time is important in order to reduce cost and increase patient throughput. Traditional approaches in this field generally tackle the video analysis using hand crafted video features to facilitate the tool detection. Recently, Twinanda et al presented a CNN architecture ’EndoNet’ which outperformed previous methods for both surgical tool detection and surgical phase detection. Given the recent success of these networks, we present a study of various architectures coupled with a submission to the M2CAI Surgical Tool Detection challenge. We achieved a top-3 result for the M2CAI competition with a mAP of 37.6.
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