Empowering Visual Categorization with the GPU

Publication Teaser Empowering Visual Categorization with the GPU
K. E. A. van de Sande, T. Gevers, C. G. M. Snoek
In IEEE Transactions on Multimedia 2011.
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Abstract
Visual categorization is important to manage large collections of digital images and video, where textual meta-data is often incomplete or simply unavailable. The bag-of-words model has become the most powerful method for visual categorization of images and video. Despite its high accuracy, a severe drawback of this model is its high computational cost. As the trend to increase computational power in newer CPU and GPU architectures is to increase their level of parallelism, exploiting this parallelism becomes an important direction to handle the computational cost of the bag-of-words approach. When optimizing a system based on the bag-of-words approach, the goal is to minimize the time it takes to process batches of images. Additionally, we also consider power usage as an evaluation metric. In this paper, we analyze the bag-of-words model for visual categorization in terms of computational cost and identify two major bottlenecks: the quantization step and the classification step. We address these two bottlenecks by proposing two efficient algorithms for quantization and classification by exploiting the GPU hardware and the CUDA parallel programming model. The algorithms are designed to (1) keep categorization accuracy intact, (2) decompose the problem and (3) give the same numerical results. In the experiments on large scale datasets it is shown that, by using a parallel implementation on the Geforce GTX260 GPU, classifying unseen images is 4.8 times faster than a quad-core CPU version on the Core i7 920, while giving the exact same numerical results. In addition, we show how the algorithms can be generalized to other applications, such as text retrieval and video retrieval. Moreover, when the obtained speedup is used to process extra video frames in a video retrieval benchmark, the accuracy of visual categorization is improved by 29%.



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Software from this paper will be available soon from http://www.colordescriptors.com
Digital Object Identifier: http://dx.doi.org/10.1109/TMM.2010.2091400

Bibtex Entry
@Article{vandeSandeITM2011,
  author       = "van de Sande, K. E. A. and Gevers, T. and Snoek, C. G. M.",
  title        = "Empowering Visual Categorization with the GPU",
  journal      = "IEEE Transactions on Multimedia",
  number       = "1",
  volume       = "13",
  pages        = "60--70",
  year         = "2011",
  url          = "https://ivi.fnwi.uva.nl/isis/publications/2011/vandeSandeITM2011",
  pdf          = "https://ivi.fnwi.uva.nl/isis/publications/2011/vandeSandeITM2011/vandeSandeITM2011.pdf",
  has_image    = 1
}
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