Title :
Data-driven taxonomy forest for fine-grained image categorization
Author :
Xiaomeng Wu ; Mori, Minoru ; Kashino, Kunio
Author_Institution :
NTT Commun. Sci. Labs., Kanagawa, Japan
fDate :
June 29 2015-July 3 2015
Abstract :
Fine-grained image categorization must handle huge cross-class ambiguities and a large number of classes. Inspired by the success of rigid hierarchical classification, we propose a new flexible hierarchical classification method, called a data-driven taxonomy forest. It constructs a multitude of taxonomies, each of which converts a complex multi-class problem to a more easily tractable path-finding problem. We demonstrate how a stochastic representation of local classification hypotheses incorporated in multiple taxonomies deals skillfully with error propagation and over-fitting. Various strategies for instance space decomposition are investigated from the viewpoint of taxonomy complexity. We comprehensively evaluate our data-driven taxonomy forest using Oxford Flower 102 and Oxford Pet benchmarks and show its superiority in effectiveness and generality to rigid hierarchical classification in fine-grained image categorization tasks.
Keywords :
image classification; stochastic processes; Oxford Flower 102 benchmarks; Oxford Pet benchmarks; complex multiclass problem; cross-class ambiguity; data-driven taxonomy forest; error propagation; fine-grained image categorization; flexible hierarchical classification method; instance space decomposition; local classification hypotheses; stochastic representation; taxonomy complexity; tractable path-finding problem; Accuracy; Binary trees; Complexity theory; Support vector machines; Taxonomy; Training; Vegetation; Fine-grained image categorization; bagging; error propagation; hierarchical classification;
Conference_Titel :
Multimedia and Expo (ICME), 2015 IEEE International Conference on
Conference_Location :
Turin
DOI :
10.1109/ICME.2015.7177530