老式的最先进的图像分类

A. Barla, F. Odone, A. Verri
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引用次数: 22

摘要

在本文中,我们提出了一种基于传统思想和最新学习工具的图像分类统计学习方案。我们通过大维度的、通常是稀疏的直方图来表示输入图像,根据任务的不同,这些直方图可以是颜色直方图,也可以是共生矩阵。支持向量机直接在这些稀疏输入上进行训练,以解决室内/室外分类和从图像数据库中检索城市景观等问题。实验结果表明,使用从计算机视觉文献中获得的核函数比使用现成的核函数具有更好的识别效果。根据我们的研究结果,似乎不需要明确的特征提取或降维阶段就可以解决图像分类问题。我们认为,这可能被用作开发图像分类系统的起点,它可以很容易地调整到许多不同的任务。
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Old fashioned state-of-the-art image classification
In this paper we present a statistical learning scheme for image classification based on a mixture of old fashioned ideas and state of the art learning tools. We represent input images through large dimensional and usually sparse histograms which, depending on the task, are either color histograms or co-occurrence matrices. Support vector machines are trained on these sparse inputs directly, to solve problems like indoor/outdoor classification and cityscape retrieval from image databases. The experimental results indicate that the use of a kernel function derived from the computer vision literature leads to better recognition results than off the shelf kernels. According to our findings, it appears that image classification problems can be addressed with no need of explicit feature extraction or dimensionality reduction stages. We argue that this might be used as the starting point for developing image classification systems which can be easily tuned to a number of different tasks.
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