Li, Jia Author
Joint image compression and classification with vector quantization and a two dimensional hidden Markov model
- Li J.
- Gray R.
- Olshen R.
Data Compression Conference Proceedings - 1/1/1999
- CiteScore: 2.6 (2020)
- SJR: 0.241 (1999
Asymptotic performance of vector quantizers with a perceptual distortion measure
- Li J.
- Chaddha N.
- Gray R.
IEEE Transactions on Information Theory - 1/1/1999
- SJR Quartile: Q1
- CiteScore: 6.3 (2020)
- SJR: 1.052 (1999
- SNIP: 1.857 (1999
- SJR Categories: Computer Science Applications (Q1); Information Systems (Q1); Library and Information Sciences (Q1)
Image classification by a two dimensional hidden Markov model
- Li J.
- Najmi A.
- Gray R.
ICASSP, IEEE International Conference on Acoustics, Speech and Signal Processing - Proceedings - 1/1/1999
- CiteScore: 4.6 (2020)
- SJR: 0.218 (1999
- SNIP: 0.299 (1999
System for screening objectionable images
- Wang J.
- Li J.
- Wiederhold G.
- Firschein O.
Computer Communications - 1/10/1998
- CiteScore: 5.5 (2020)
Photo composition feedback and enhancement exploiting spatial design categories and the notan dark-light principle
- Li J.
- Yao L.
- Wang J.
Mobile Cloud Visual Media Computing: From Interaction to Service - 1/1/2015
On aesthetics and emotions in scene images: A computational perspective
Scene Vision: Making Sense of What We See - 1/1/2014
Learning Performance Maximizing Ensembles with Explainability Guarantees
- Pisztora V.
- Li J.
Proceedings of the AAAI Conference on Artificial Intelligence - 25/3/2024
An investigation into three visual characteristics of complex scenes that evoke human emotion
- Lu X.
- Adams R.
- Li J.
- Newman M.
- Wang J.
2017 7th International Conference on Affective Computing and Intelligent Interaction, ACII 2017 - 2/7/2017
Beyond saliency: Assessing visual balance with high-level cues
- Kandemir B.
- Zhou Z.
- Li J.
- Wang J.
Thematic Workshops 2017 - Proceedings of the Thematic Workshops of ACM Multimedia 2017, co-located with MM 2017 - 23/10/2017
A simulated annealing based inexact oracle for wasserstein loss minimization
- Ye J.
- Wang J.
- Li J.
34th International Conference on Machine Learning, ICML 2017 - 1/1/2017
AutoScaler: Scale-attention networks for visual correspondence
- Wang S.
- Luo L.
- Zhang N.
- Li J.
British Machine Vision Conference 2017, BMVC 2017 - 1/1/2017
Determining gains acquired from word embedding quantitatively using discrete distribution clustering
- Ye J.
- Li Y.
- Wu Z.
- Wang J.
- Li W.
- Li J.
ACL 2017 - 55th Annual Meeting of the Association for Computational Linguistics, Proceedings of the Conference (Long Papers) - 1/1/2017
A distance for HMMS based on aggregated wasserstein metric and state registration
- Chen Y.
- Ye J.
- Li J.
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) - 1/1/2016
- CiteScore: 1.8 (2020)
- SJR: 0.339 (2016
- SNIP: 0.676 (2016
Identifying emotions aroused from paintings
- Lu X.
- Sawant N.
- Newman M.
- Adams R.
- Wang J.
- Li J.
Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) - 1/1/2016
- CiteScore: 1.8 (2020)
- SJR: 0.339 (2016
- SNIP: 0.676 (2016
Modeling perspective effects in photographic composition
- Zhou Z.
- He S.
- Li J.
- Wang J.
MM 2015 - Proceedings of the 2015 ACM Multimedia Conference - 13/10/2015
- SJR Categories: Hardware and Architecture; Human-Computer Interaction
Opportunities and challenges of industry-Academic collaborations in multimedia research
- Chang S.F.
- Cooper M.
- Dash D.
- Kivran-Swaine F.
- Li J.
- Shamma D.A.
MM 2015 - Proceedings of the 2015 ACM Multimedia Conference - 13/10/2015
This author has no patents.
This author has no reports or other types of publications.
h index
Scopus: 40
Web of Science: 4
i10 index
Scopus: 61
Web of Science: 2
Author profiles
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Research projects at UAL
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Acronym TIN2017-83964-RSince: January 1, 2018Until: December 31, 2021Funded by: MECFunding / grant amount: 67,760.00 EURRole: Equipo de trabajo