Keyword search (4,163 papers available)

"Patterson Z" Authored Publications:

Title Authors PubMed ID
1 From data to action in flood forecasting leveraging graph neural networks and digital twin visualization Roudbari NS; Punekar SR; Patterson Z; Eicker U; Poullis C; 39127785
ENCS
2 FishSegSSL: A Semi-Supervised Semantic Segmentation Framework for Fish-Eye Images Paul S; Patterson Z; Bouguila N; 38535151
ENCS
3 Who's cooking tonight? A time-use study of coupled adults in Toronto, Canada Liu B; Widener MJ; Smith LG; Farber S; Gesink D; Minaker LM; Patterson Z; Larsen K; Gilliland J; 36339032
ENCS
4 Activity space-based measures of the food environment and their relationships to food purchasing behaviours for young urban adults in Canada. Widener MJ, Minaker LM, Reid JL, Patterson Z, Ahmadi TK, Hammond D 29547369
CONCORDIA
5 Evaluating the Impact of Neighborhood Characteristics on Differences between Residential and Mobility-Based Exposures to Outdoor Air Pollution. Fallah-Shorshani M, Hatzopoulou M, Ross NA, Patterson Z, Weichenthal S 30119601
ENCS

 

Title:FishSegSSL: A Semi-Supervised Semantic Segmentation Framework for Fish-Eye Images
Authors:Paul SPatterson ZBouguila N
Link:https://pubmed.ncbi.nlm.nih.gov/38535151/
DOI:10.3390/jimaging10030071
Publication:Journal of imaging
Keywords:autonomous drivingfish-eye imagessemantic segmentationsemi-supervised learning
PMID:38535151 Category: Date Added:2024-03-27
Dept Affiliation: ENCS
1 Concordia Institute for Information Systems Engineering (CIISE), Concordia University, Montreal, QC H3G1M8, Canada.

Description:

The application of large field-of-view (FoV) cameras equipped with fish-eye lenses brings notable advantages to various real-world computer vision applications, including autonomous driving. While deep learning has proven successful in conventional computer vision applications using regular perspective images, its potential in fish-eye camera contexts remains largely unexplored due to limited datasets for fully supervised learning. Semi-supervised learning comes as a potential solution to manage this challenge. In this study, we explore and benchmark two popular semi-supervised methods from the perspective image domain for fish-eye image segmentation. We further introduce FishSegSSL, a novel fish-eye image segmentation framework featuring three semi-supervised components: pseudo-label filtering, dynamic confidence thresholding, and robust strong augmentation. Evaluation on the WoodScape dataset, collected from vehicle-mounted fish-eye cameras, demonstrates that our proposed method enhances the model's performance by up to 10.49% over fully supervised methods using the same amount of labeled data. Our method also improves the existing image segmentation methods by 2.34%. To the best of our knowledge, this is the first work on semi-supervised semantic segmentation on fish-eye images. Additionally, we conduct a comprehensive ablation study and sensitivity analysis to showcase the efficacy of each proposed method in this research.





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