Skip to content

Commit a33241c

Browse files
author
KCL Default
committed
Automated weekly lab webpage update (2026-03-23 16:10:36)
1 parent 43de549 commit a33241c

File tree

2 files changed

+13
-11
lines changed

2 files changed

+13
-11
lines changed

_data/pub/override.bib

Lines changed: 7 additions & 6 deletions
Original file line numberDiff line numberDiff line change
@@ -11,10 +11,11 @@ @misc{Jang2026_ticls_tightly_coupled_language_text_spotter
1111
year = {2026}
1212
}
1313

14-
@misc{Jang2026_omnident_towards_an_accessible_and_explainable,
15-
author = {Leeje Jang and Yao-Yi Chiang and Angela M Hastings and Patimaporn Pungchanchaikul and Martha B Lucas and Emily C Schultz and Jeffrey P Louie and Mohamed Estai and Wen-Chen Wang and Ryan HL Ip and Boyen Huang},
16-
howpublished = {Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision},
17-
title = {OMNI-Dent: Towards an Accessible and Explainable AI Framework for Automated Dental Diagnosis},
18-
url = {https://openaccess.thecvf.com/content/WACV2026W/P2P/html/Jang_OMNI-Dent_Towards_an_Accessible_and_Explainable_AI_Framework_for_Automated_WACVW_2026_paper.html},
19-
year = {2026}
14+
@InProceedings{Jang2026_omnident_towards_an_accessible_and_explainable,
15+
author = {Jang, Leeje and Chiang, Yao-Yi and Hastings, Angela M. and Pungchanchaikul, Patimaporn and Lucas, Martha B. and Schultz, Emily C. and Louie, Jeffrey P. and Estai, Mohamed and Wang, Wen-Chen and Ip, Ryan H.L and Huang, Boyen},
16+
title = {OMNI-Dent: Towards an Accessible and Explainable AI Framework for Automated Dental Diagnosis},
17+
booktitle = {Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision (WACV) Workshops},
18+
month = {March},
19+
year = {2026},
20+
pages = {415-424}
2021
}

publications.bib

Lines changed: 6 additions & 5 deletions
Original file line numberDiff line numberDiff line change
@@ -1,5 +1,5 @@
11
% AUTO-GENERATED FILE — DO NOT EDIT
2-
% Updated on 2026-03-23T21:09:10Z
2+
% Updated on 2026-03-23T21:10:36Z
33
44
@inproceedings{10.1007/978-3-032-04617-8_3,
55
abstract = {Historical maps contain valuable, detailed survey data often unavailable elsewhere. Automatically extracting linear objects, such as fault lines, from scanned historical maps benefits diverse application areas, such as mining resource prediction. However, existing models encounter challenges in capturing adequate image context and spatial context. Insufficient image context leads to false detections by failing to distinguish desired linear objects from others with similar appearances. Meanwhile, insufficient spatial context hampers the accurate delineation of elongated, slender-shaped linear objects. This paper introduces the Linear Object Detection TRansformer (LDTR), which directly generates accurate vector graphs for linear objects from scanned map images. LDTR leverages multi-scale deformable attention to capture representative image context, reducing false detections. Furthermore, LDTR's innovative N-hop connectivity component explicitly encourages interactions among nodes within an N-hop neighborhood, enabling the model to learn sufficient spatial context for generating graphs with accurate connectivity. Experiments show that LDTR improves detection precision by 6{\%} and enhances line connectivity by 20{\%} over state-of-the-art baselines.},
@@ -1292,11 +1292,12 @@ @inproceedings{Jaiswal2014-km
12921292
year = {2014}
12931293
}
12941294

1295-
@misc{Jang2026_omnident_towards_an_accessible_and_explainable,
1296-
author = {Leeje Jang and Yao-Yi Chiang and Angela M Hastings and Patimaporn Pungchanchaikul and Martha B Lucas and Emily C Schultz and Jeffrey P Louie and Mohamed Estai and Wen-Chen Wang and Ryan HL Ip and Boyen Huang},
1297-
howpublished = {Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision},
1295+
@inproceedings{Jang2026_omnident_towards_an_accessible_and_explainable,
1296+
author = {Jang, Leeje and Chiang, Yao-Yi and Hastings, Angela M. and Pungchanchaikul, Patimaporn and Lucas, Martha B. and Schultz, Emily C. and Louie, Jeffrey P. and Estai, Mohamed and Wang, Wen-Chen and Ip, Ryan H.L and Huang, Boyen},
1297+
booktitle = {Proceedings of the IEEE/CVF Winter Conference on Applications of Computer Vision (WACV) Workshops},
1298+
month = {March},
1299+
pages = {415-424},
12981300
title = {OMNI-Dent: Towards an Accessible and Explainable AI Framework for Automated Dental Diagnosis},
1299-
url = {https://openaccess.thecvf.com/content/WACV2026W/P2P/html/Jang_OMNI-Dent_Towards_an_Accessible_and_Explainable_AI_Framework_for_Automated_WACVW_2026_paper.html},
13001301
year = {2026}
13011302
}
13021303

0 commit comments

Comments
 (0)