9
0
0
0
0
Visual attributes
- 其他作者:
- 其他題名:
- Advances in computer vision and pattern recognition.
- 出版: Cham : Springer International Publishing :Imprint: Springer
- 叢書名: Advances in computer vision and pattern recognition,
- 主題: Computer vision. , Machine learning. , Attribute (Philosophy) , Categories (Philosophy) , Computer Science. , Image Processing and Computer Vision. , Artificial Intelligence (incl. Robotics) , User Interfaces and Human Computer Interaction.
- ISBN: 9783319500775 (electronic bk.) 、 9783319500751 (paper)
- FIND@SFXID: CGU
- 資料類型: 電子書
- 內容註: Introduction to Visual Attributes,- Part I: Attribute-Based Recognition -- An Embarrassingly Simple Approach to Zero-Shot Learning -- In the Era of Deep Convolutional Features: Are Attributes still Useful Privileged Data? -- Divide, Share, and Conquer: Multi-Task Attribute Learning with Selective Sharing -- Part II: Relative Attributes and their Application to Image Search -- Attributes for Image Retrieval -- Fine-Grained Comparisons with Attributes -- Localizing and Visualizing Relative Attributes -- Part III: Describing People Based on Attributes -- Deep Learning Face Attributes for Detection and Alignment -- Visual Attributes for Fashion Analytics -- Part IV: Defining a Vocabulary of Attributes -- A Taxonomy of Part and Attribute Discovery Techniques -- The SUN Attribute Database: Organizing Scenes by Affordances, Materials, and Layout -- Part V: Attributes and Language -- Attributes as Semantic Units Between Natural Language and Visual Recognition -- Grounding the Meaning of Words with Visual Attributes.
- 摘要註: This unique text/reference provides a detailed overview of the latest advances in machine learning and computer vision related to visual attributes, highlighting how this emerging field intersects with other disciplines, such as computational linguistics and human-machine interaction. Topics and features: Presents attribute-based methods for zero-shot classification, learning using privileged information, and methods for multi-task attribute learning Describes the concept of relative attributes, and examines the effectiveness of modeling relative attributes in image search applications Reviews state-of-the-art methods for estimation of human attributes, and describes their use in a range of different applications Discusses attempts to build a vocabulary of visual attributes Explores the connections between visual attributes and natural language Provides contributions from an international selection of world-renowned scientists, covering both theoretical aspects of visual attribute learning and practical computer vision applications This authoritative work is a must-read for all researchers interested in recognizing visual attributes and using them in real-world applications, and is accessible to the wider research community in visual and semantic understanding. Dr. Rogerio Schmidt Feris is a manager at IBM T.J. Watson Research Center, New York, USA, where he leads research in computer vision and machine learning. Dr. Christoph H. Lampert is a professor at the Institute of Science and Technology Austria, where he serves as the Principal Investigator of the Computer Vision and Machine Learning Group. Dr. Devi Parikh is an assistant professor in the School of Interactive Computing at Georgia Tech, USA, where she leads the Computer Vision Lab.
-
讀者標籤:
- 系統號: 005384778 | 機讀編目格式