Ching-Tung Wu
University of California, Santa Barbara
7 Papers
134 Citations
Ching-Tung Wu is an academic researcher from University of California, Santa Barbara. The author has contributed to research in topics: Support vector machine & Mixture model. The author has an hindex of 6, co-authored 7 publications.
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Papers
Using visual features for anti-spam filtering
Ching-Tung Wu,Kwang-Ting Cheng,Qiang Zhu,Yi-Leh Wu +3 more
- 01 Jan 2005
TL;DR: A novel anti-spam system which utilizes visual clues, in addition to text information in the email body, to determine whether a message is spam, using one-class support vector machines (SVM) as the underlying base classifier for anti- Spam filtering.
122
Adaptive learning of an accurate skin-color model
Qiang Zhu,Kwang-Ting Cheng,Ching-Tung Wu,Yi-Leh Wu +3 more
- 17 May 2004
TL;DR: An adaptive skin-detection method, which allows modeling true skin-color distribution with significantly higher accuracy and flexibility than other methods attain, and can be applied to both still images and video applications.
91
PBIR: perception-based image retrieval-a system that can quickly capture subjective image query concepts
Edward Y. Chang,Kwang-Ting Cheng,Wei-Cheng Lai,Ching-Tung Wu,Chengwei Chang,Yi-Leh Wu +5 more
- 01 Oct 2001
TL;DR: The Perception-Based Image Retrieval (PBIR) system is described, which shows that MEGA and SVMActive can learn a complex image-query concept in a small number of user iterations on a large, multi- category, high-dimensional image database.
13
MORF: A Distributed Multimodal Information Filtering System
Yi-Leh Wu,Edward Y. Chang,Kwang-Ting Cheng,Chengwei Chang,Chen-Cha Hsu,Wei-Cheng Lai,Ching-Tung Wu +6 more
- 16 Dec 2002
TL;DR: Empirical study and initial statistics collected from the MORF filters deployed at sites in the U.S. and Asia show that MORF is both efficient and effective, compared to the traditional URL- and text-based filtering approaches.
4
A unified adaptive approach to accurate skin detection
Qiang Zhu,Kwang-Ting Cheng,Ching-Tung Wu +2 more
- 24 Oct 2004
TL;DR: An adaptive skin detection framework is proposed, which allows modeling title skin distribution with significantly higher accuracy and flexibility and develops a support vector machine (SVM) classifier to identify the skin Gaussian from the trained GMM by incorporating spatial and shape information of skin pixels.