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Fading Affect Bias: Improving the Trade-off Between Accuracy and Efficiency in Feature Clustering

机译:渐隐效果偏差:在特征聚类中提高准确性和效率之间的权衡

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We present a fast and accurate center-based, singlepass clustering method, with main focus on improving the trade-off between accuracy and speed in computer vision problems, such as creating visual vocabularies. We use a stochastic Mean-shift procedure to seek the local density peaks within a single pass of the data. We also present a dynamic kernel generation along with a density test procedure that finds the most promising kernel initializations. In our algorithm, we use two data structures, namely a dictionary of permanent kernels, and a 'short memory' that is used to determine emerging kernels to be maintained and outliers to be discarded. In our experiments we make extensive comparisons with popular clustering algorithms, with respect to accuracy and efficiency.
机译:我们提出了一种快速,准确的基于中心的单遍聚类方法,主要致力于改善计算机视觉问题(如创建视觉词汇)的准确性和速度之间的权衡。我们使用随机均值漂移过程在数据的一次传递中寻找局部密度峰值。我们还介绍了动态内核生成以及发现最有希望的内核初始化的密度测试过程。在我们的算法中,我们使用两个数据结构,即永久内核字典和“短内存”,用于确定要维护的新兴内核和要丢弃的异常值。在我们的实验中,我们在准确性和效率方面与流行的聚类算法进行了广泛的比较。

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