A Visual Vocabulary for Flower Classification 论文

2006引用 825
Plant and Fungal Species DescriptionsSmart Agriculture and AIAdvanced Image and Video Retrieval Techniques

详细信息

发表日期
2006-07-10
发表年份
2006

关键词

Plant and Fungal Species DescriptionsSmart Agriculture and AIAdvanced Image and Video Retrieval Techniques

摘要

We investigate to what extent ‘bag of visual words’ models can be used to distinguish categories which have significant visual similarity. To this end we develop and optimize a nearest neighbour classifier architecture, which is evaluated on a very challenging database of flower images. The flower categories are chosen to be indistinguishable on colour alone (for example), and have considerable variation in shape, scale, and viewpoint. We demonstrate that by developing a visual vocabulary that explicitly represents the various aspects (colour, shape, and texture) that distinguish one flower from another, we can overcome the ambiguities that exist between flower categories. The novelty lies in the vocabulary used for each aspect, and how these vocabularies are combined into a final classifier. The various stages of the classifier (vocabulary selection and combination) are each optimized on a validation set. Results are presented on a dataset of 1360 images consisting of 17 flower species. It is shown that excellent performance can be achieved, far surpassing standard baseline algorithms using (for example) colour cues alone.

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