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A New Method of Image Classification Based on Local Appearance and Context Information

机译:基于局部外观和上下文信息的图像分类新方法

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In this paper, we present a new method to recognize object class based on local appearance features and context information. At first, local descriptors of object class appearance are clustered, then part classifiers are trained to select the most distinctive image patches and visual context information around them are extracted to keep the robustness to object occlusion and background clutter. Finally general probabilistic models are built to implement image classification by integrating the context information with local scale-invariant appearance characteristics. Compared with previous work, we obtain a better classification with limited and unnormalized training samples. Experiment results show that the proposed method can outperform other previous methods even under large scale object classes, therefore the significance of appearance-based discriminative part classifiers is demonstrated and confirmed.
机译:在本文中,我们提出了一种基于局部外观特征和上下文信息识别对象类的新方法。首先,将对象类外观的局部描述符聚类,然后训练零件分类器以选择最有特色的图像块,并提取它们周围的视觉上下文信息,以保持对对象遮挡和背景混乱的鲁棒性。最后,通过将上下文信息与局部尺度不变的外观特征集成在一起,构建了通用的概率模型来实现图像分类。与以前的工作相比,我们使用有限且未标准化的训练样本获得了更好的分类。实验结果表明,所提出的方法即使在大规模的对象类别下也能胜过其他方法,因此证明并证实了基于外观的判别性零件分类器的重要性。

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