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The University of Surrey Visual Concept Detection System at ImageCLEF@ICPR: Working Notes

机译:Imageclef @ ICPR的萨里视觉概念检测系统大学:工作票据

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Visual concept detection is one of the most important tasks in image and video indexing. This paper describes our system in the ImageCLEF@ICPR Visual Concept Detection Task which ranked first for large-scale visual concept detection tasks in terms of Equal Error Rate (EER) and Area under Curve (AUC) and ranked third in terms of hierarchical measure. The presented approach involves state-of-the-art local descriptor computation, vector quantisation via clustering, structured scene or object representation via localised histograms of vector codes, similarity measure for kernel construction and classifier learning. The main novelty is the classifier-level and kernel-level fusion using Kernel Discriminant Analysis with RBF/Power Chi-Squared kernels obtained from various image descriptors. For 32 out of 53 individual concepts, we obtain the best performance of all 12 submissions to this task.
机译:视觉概念检测是图像和视频索引中最重要的任务之一。本文介绍了我们在ImageClef @ICPR Visual概念检测任务中的系统,该概念检测任务在曲线(AUC)下的等于错误率(eer)和区域方面排名第一,并在分层测量方面排名第三。该方法涉及最先进的本地描述符计算,通过群集,结构化场景或对象表示,通过局部化的矢量代码的局部直方图,内核构造和分类器学习的相似度量。主要的新颖性是使用从各种图像描述符获得的RBF / Power Chi平方内核的核判别分析来分类和内核级融合。对于53个个别概念中的32项,我们获得了所有12个提交的最佳表现。

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