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Classification of image registration problems using support vector machines

机译:使用支持向量机对图像配准问题进行分类

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This paper introduces a system that automatically classifies image pairs based on the type of registration required to align them. The system uses support vector machines to classify between panoramas, high-dynamic-range images, focal stacks, super-resolution, and unrelated image pairs. A feature vector was developed to describe the images, and 1100 pairs were used to train and test the system with 5-fold cross validation. The system is able to classify the desired registration application using a 1: Many classifier with an accuracy of 91.18%. Similarly 1:1 classifiers were developed for each class with classification rates as follows: Panorama image pairs are classified at 93.15%, high-dynamic-range pairs at 97.56%, focal stack pairs at 95.68%, super-resolution pairs at 99.25%, and finally unrelated image pairs at 95.79%. An investigation into feature importance outlines the utility of each feature individually. In addition, the invariance of the classification system towards the size of the image used to calculate the feature vector was explored. The classification of our system remains level at ∼91% until the image size is scaled to 10% (150 × 100 pixels), suggesting that our feature vector is image size invariant within this range.
机译:本文介绍了一个系统,可根据对齐它们所需的注册类型自动对图像对进行分类。该系统使用支持向量机来分类Panoramas,高动态图像,焦点堆栈,超级分辨率和不相关的图像对。开发了一种特征向量来描述图像,并使用1100对以5倍交叉验证训练和测试系统。该系统能够使用1:许多分类器对所需的注册申请进行分类,精度为91.18%。类似地,为每个课程开发了1:1分类器,如下分类率:全景图像对分类为93.15%,高动态对成对97.56%,焦点堆对95.68%,超分辨率对在99.25%,最后的无关图像对为95.79%。调查特征重要性概述了每个功能的单独实用程序。此外,还探讨了分类系统对用于计算特征向量的图像的大小的依次的不变性。我们的系统分类保持〜91%的水平,直到图像尺寸缩放为10%(150×100像素),表明我们的特征向量是此范围内的图像大小不变。

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