SVM- hmm联合分类器与SVM分类器的时序约束分析

A. K. Kumawat, Sarika Khandelwal
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引用次数: 1

摘要

在手写体验证器中,时间约束是支持向量机分类器中使用的非常关键的部分,这些分类器对大量的样本使用更多的时间而得到的准确率较低。当使用SVM- hmm联合分析时,对大样本的分析时间更短,准确度优于SVM。所有的时间都用曲波变换进行评估,并以1和0的形式产生数字时钟脉冲。在选定的写入图像的位置上,用经过训练的数据图像中波长的不变运动进行计算,并将其替换,然后对二进制数进行度量,用不变曲线let的方法进行计算,然后在计算图像二进制码的时间上比较特征,并在SVM-HMM的条纹线上进行1和0的度量。
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Analysis of timing constraint on combined SVM-HMM classifier and SVM classifier
In Handwriting Verifier Timing constraint is very crucial part which have used in the SVM Classifier, these have using the more time for the large number of sample and get the less accuracy. When there is used the Combined SVM-HMM so that has taken less time for the analysis the large sample and give better accuracy than SVM. That all time has evaluated with the curvelet transform and make a digital clock pulse in form of 1's and 0's. Which have calculate in the invariant movement with the wavelength from the trained data image and replace them, on the place of selected writing image, than make an metric of binary number and calculate them with the method of invariant curve let, thereafter compare the character on the time of the calculate image binary code and make an metrics on the striate line of SVM-HMM in terms of 1's and 0's.
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