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Exploring feature dimensionality reduction methods for enhancing automatic sport image annotation

机译:探索特征降维方法以增强自动运动图像注释

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摘要

Nowadays, multimedia information requires the demand to investigate and apply efficient techniques for better annotation and retrieval purposes. In the content-based indexing, low-level features are generally extracted from images to serve as image descriptors. Other than the descriptor poses a computational overhead, the learning model may also tend to overfit, resulting in performance degeneration. This work solves such problems in the sport image domain by proposing feature dimensionality reduction techniques for the retrieval and annotation of image datasets. Different techniques are investigated, such as Information Gain, Gain Ratio, Chi-Square, and Latent Semantic Analysis (LSA), and applied for sport images classification using Support Vector Machine (SVM) classifier. A comparison between the performances of applying SVM alone and when incorporating the different reduction methods is presented. Experimental results show that the SVM classification accuracy is 76.4%; while integrating LSA technique manages to raise the accuracy to 96%, with the other techniques recording 74% accuracy at 50% feature space reduction.
机译:如今,多媒体信息需要研究和应用有效的技术以达到更好的注释和检索目的。在基于内容的索引中,通常从图像中提取低级特征以用作图像描述符。除了描述符带来了计算开销外,学习模型还可能趋于过度拟合,从而导致性能下降。这项工作通过提出用于图像数据集的检索和注释的特征降维技术,解决了运动图像领域中的此类问题。研究了不同的技术,例如信息增益,增益比,卡方和潜在语义分析(LSA),并使用支持向量机(SVM)分类器将其应用于运动图像分类。给出了单独应用SVM的性能与合并不同缩减方法时的性能之间的比较。实验结果表明,支持向量机的分类精度为76.4%。整合LSA技术可将准确度提高到96%,而其他技术在减少50%特征空间的情况下可将准确度提高到74%。

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