A Semantic Typicality Measure for Natural Scene Categorization

We propose an approach to categorize real-world natural scenes based on a semantic typicality measure. The proposed typicality measure allows to grade the similarity of an image with respect to a scene category. We argue that such a graded decision is appropriate and justified both from a human’s perspective as well as from the image-content point of view. The method combines bottom-up information of local semantic concepts with the typical semantic content of an image category. Using this learned category representation the proposed typicality measure also quantifies the semantic transitions between image categories such as coasts, rivers/lakes, forest, plains, mountains or sky/clouds. The method is evaluated quantitatively and qualitatively on a database of natural scenes. The experiments show that the typicality measure well represents the diversity of the given image categories as well as the ambiguity in human judgment of image categorization.

[1]  M. Posner,et al.  On the genesis of abstract ideas. , 1968, Journal of experimental psychology.

[2]  E. Rosch,et al.  Family resemblances: Studies in the internal structure of categories , 1975, Cognitive Psychology.

[3]  E. Rosch Cognitive Representations of Semantic Categories. , 1975 .

[4]  B. Tversky,et al.  Categories of environmental scenes , 1983, Cognitive Psychology.

[5]  Rosalind W. Picard,et al.  Texture orientation for sorting photos "at a glance" , 1994, Proceedings of 12th International Conference on Pattern Recognition.

[6]  Martin Szummer,et al.  Indoor-outdoor image classification , 1998, Proceedings 1998 IEEE International Workshop on Content-Based Access of Image and Video Database.

[7]  Oded Maron,et al.  Multiple-Instance Learning for Natural Scene Classification , 1998, ICML.

[8]  Charles A. Bouman,et al.  Perceptual image similarity experiments , 1998, Electronic Imaging.

[9]  Marcel Worring,et al.  Content-Based Image Retrieval at the End of the Early Years , 2000, IEEE Trans. Pattern Anal. Mach. Intell..

[10]  Anil K. Jain,et al.  Image classification for content-based indexing , 2001, IEEE Trans. Image Process..

[11]  Milind R. Naphade,et al.  A probabilistic framework for semantic video indexing, filtering, and retrieval , 2001, IEEE Trans. Multim..

[12]  Nando de Freitas,et al.  Object Recognition as Machine Translation – Part 2: Exploiting Image Database Clustering Models , 2001 .

[13]  G. Murphy,et al.  The Big Book of Concepts , 2002 .

[14]  Pat Langley,et al.  Editorial: On Machine Learning , 1986, Machine Learning.

[15]  Antonio Torralba,et al.  Modeling the Shape of the Scene: A Holistic Representation of the Spatial Envelope , 2001, International Journal of Computer Vision.