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Coloring bag-of-words based image representations

  • Autores: Fahad Shahbaz Khan
  • Directores de la Tesis: Joost van de Weijer (dir. tes.) Árbol académico, Maria Vanrell i Martorell (codir. tes.) Árbol académico
  • Lectura: En la Universitat Autònoma de Barcelona ( España ) en 2011
  • Idioma: inglés
  • Tribunal Calificador de la Tesis: Theo Gevers (presid.) Árbol académico, Oriol Pujol Vila (secret.) Árbol académico, Gustavo Camps Valls (voc.) Árbol académico
  • Enlaces
    • Tesis en acceso abierto en: TESEO
  • Resumen
    • Put succinctly, the bag-of-words based image representation is the most successful approach for object and scene recognition. Within the bag-of-words framework the optimal fusion of multiple cues, such as shape, texture and color, still remains an active research domain. There exist two main approaches to combine color and shape information within the bag-of-words framework. The 1rst approach called, early fusion, fuses color and shape at the feature level as a result of which a joint color- shape vocabulary is produced. The second approach, called late fusion, concatenates histogram representation of both color and shape, obtained independently.

      In the 1rst part of this thesis, we analyze the theoretical implications of both early and late feature fusion. We demonstrate that both these approaches are sub- optimal for a subset of object categories. Consequently, we propose a novel method for recognizing object categories when using multiple cues by separately processing the shape and color cues and combining them by modulating the shape features by category specific color attention. Color is used to compute bottom-up and top- down attention maps. Subsequently, the color attention maps are used to modulate the weights of the shape features. Shape features are given more weight in regions with higher attention and vice versa. The approach is tested on several benchmark object recognition data sets and the results clearly demonstrate the effectiveness of our proposed method.

      In the second part of the thesis, we investigate the problem of obtaining compact spatial pyramid representations for object and scene recognition. Spatial pyramids have been successfully applied to incorporate spatial information into bag-of-words based image representation. However, a major drawback of spatial pyramids is that it leads to high dimensional image representations. We present a novel framework for obtaining compact pyramid representation. The approach reduces the size of a high dimensional pyramid representation upto an order of magnitude without any significant reduction in accuracy. Moreover, we also investigate the optimal combination of multiple features such as color and shape within the context of our compact pyramid representation.

      Finally, we describe a novel technique to build discriminative visual words from multiple cues learned independently from training images. To this end, we use an information theoretic vocabulary compression technique to 2nd discriminative combinations of visual cues and the resulting visual vocabulary is compact, has the cue binding property, and supports individual weighting of cues in the final image representation. The approach is tested on standard object recognition data sets.

      The results obtained clearly demonstrate the effectiveness of our approach.


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