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Improving the ScSPM model with Log-Euclidean Covariance matrix for scene classification

机译:用对数-欧式协方差矩阵改进ScSPM模型进行场景分类

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The framework of the ScSPM (Spatial Pyramid matching method using Sparse Coding) model is concise, but a good performance in scene classification is achieved. However, its performance can not be significantly improved duo to the limited discriminative power of the SIFT descriptors. To address the problem, covariance matrices as region descriptors are introduced to incorporate with the SIFTs. For computing the distance between them, covariances are transformed to LECM features by matrix logarithm operation. Moreover, exponential weights are imposed on the pooled features to enhance the performance of linear kernel SVM. Experiments on the public datasets demonstrate that the performance of the ScSPM can be improved dramatically by combining the LECM features, and our model achieves the performance competitive with previous methods.
机译:ScSPM(使用稀疏编码的空间金字塔匹配方法)模型的框架很简洁,但是在场景分类方面却取得了良好的性能。但是,由于SIFT描述符的识别能力有限,因此无法显着提高其性能。为了解决该问题,引入了作为区域描述符的协方差矩阵以与SIFT合并。为了计算它们之间的距离,通过矩阵对数运算将协方差转换为LECM特征。此外,对合并的特征施加指数权重以增强线性内核SVM的性能。在公共数据集上进行的实验表明,通过结合LECM功能可以显着提高ScSPM的性能,并且我们的模型可实现与以前的方法相当的性能。

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