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Hierarchical Learning for Large-Scale Image Classification via CNN and Maximum Confidence Path

机译:通过CNN和最大置信度路径进行大规模图像分类的分层学习

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We propose a framework to integrate the large scale image data visualization with image classification. The Convolution Neural Network is used to learn the feature vector for an image. A fast algorithm is developed for inter-class similarity measurement. The spectral clustering is implemented to construct a hierarchical visual tree. Instead of the flat classification way, a hierarchical classification is designed according to the visual tree, which is transformed to a path search problem. The path with the maximum joint probability is the final solution. Experimental results on the ILSVRC2010 dataset demonstrate that our method achieves the highest top-1 and top-5 classification accuracy in comparison with 6 state-of-the-art methods.
机译:我们提出了一个框架,将大规模图像数据可视化与图像分类集成在一起。卷积神经网络用于学习图像的特征向量。开发了一种用于类间相似性度量的快速算法。实施光谱聚类以构造分层的视觉树。代替平面分类的方法,而是根据视觉树来设计分层分类,将其转换为路径搜索问题。具有最大联合概率的路径是最终解决方案。 ILSVRC2010数据集上的实验结果表明,与6种最新方法相比,我们的方法实现了最高的top-1和top-5分类精度。

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