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Ensemble based constrained-optimization extreme learning machine for landmark recognition

机译:基于集成的约束优化极限学习机,用于地标识别

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Landmark recognition attracts great concerns in recent years due to its extensive applications in mobile terminals. An effective recognition system with high recognition accuracy and fast response speed is highly desired by users. In this paper, we propose an ensemble based constrained-optimization extreme learning machine (CO-ELM) combining with the spatial pyramid kernel based bag-of-words (SPK-BoW) method for landmark recognition. The recent SPK-BoW method is employed for feature extraction and representation due to its effectiveness in exploiting the spatial layout information for landmark images. To enhance the recognition performance and accelerate the data training and testing speed, the voting based CO-ELM (VCO-ELM) with multiple network ensembles is proposed as the classifier. Experiments on two real-world landmark datasets show that the proposed VCO-ELM algorithm outperforms the original CO-ELM and support vector machine (SVM) in general.
机译:由于地标识别在移动终端中的广泛应用,近年来引起了极大的关注。用户高度期望一种具有高识别精度和快速响应速度的有效识别系统。在本文中,我们结合基于空间金字塔核的词袋(SPK-BoW)方法提出了一种基于集合的约束优化极限学习机(CO-ELM)。由于其在利用地标图像的空间布局信息方面的有效性,最近的SPK-BoW方法被用于特征提取和表示。为了提高识别性能,加快数据训练和测试速度,提出了基于投票的具有多个网络集合的CO-ELM(VCO-ELM)作为分类器。在两个真实世界的地标数据集上进行的实验表明,提出的VCO-ELM算法总体上优于原始的CO-ELM和支持向量机(SVM)。

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