Toward a practical visual object recognition system

Mao Nguyen, M. Tran
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Abstract

Recent researches in cognitive science and document recognition have been applied to deal with the problem of categorizing object. Bag-of-Features (BoF) and its extension Spatial Pyramid Matching (SPM) have made a breakthrough in resolving this kind of challenges. Many methods followed this guideline really enhance the recognition accuracy but still have drawbacks in developing a real-world application whose data size is many times bigger. In this paper we propose two kinds of strategy include five criteria to evaluate and select the most appropriate training samples using for building a high performance classifier. We also suggest a method called reinforcement codebook learning to make the codebook training process not only purpose-built to best fits with the most suitable criteria but also much more efficient by reducing significantly its complexity of computation. Experiments on benchmark object dataset demonstrate that our proposed framework outperforms remarkable results and is comparable with the state-of-the-art in spite of using just 20% of 9 · 106 descriptors for training the dictionary. These results give a promise of building a efficient and feasible object categorization system for practical application as so as suggest some ideas to improve the visual feature representation in future.
迈向一个实用的视觉物体识别系统
近年来,认知科学和文档识别的研究成果已被应用于处理对象分类问题。特征袋匹配(BoF)及其扩展的空间金字塔匹配(SPM)在解决这一难题方面取得了突破性进展。遵循这一指导原则的许多方法确实提高了识别的准确性,但在开发数据大小大许多倍的实际应用程序时仍然存在缺点。在本文中,我们提出了两种策略,包括五个标准来评估和选择最合适的训练样本,用于构建高性能分类器。我们还提出了一种称为强化码本学习的方法,使码本训练过程不仅适合最合适的标准,而且通过显着降低其计算复杂性而更加高效。在基准对象数据集上的实验表明,尽管我们所提出的框架仅使用了9106个描述符中的20%来训练字典,但仍取得了显著的效果,并且与最先进的框架相当。这些结果为构建一个具有实际应用价值的高效可行的目标分类系统提供了希望,并为今后改进视觉特征表示提出了一些思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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