Analisa Hasil Perbandingan Poly Kernel Dan Normalisasi Poly Kernel Pada Support Vector Machine Sebagai Metode Klasifikasi Citra Tanda Tangan

C. Widiawati, Suliswaningsih Suliswaningsih
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Abstract

Signature is one of the important characteristics that can be used in verification of several documents, one of which is an academic document. Signature verification in the academic environment is important, especially in ensuring the authenticity of the lecturers or teaching staff signatures. Not a few students who choose to falsify the signature of a lecturer or teaching staff in order to facilitate their academic process, this is an important issue especially if the student is actually not eligible and does not meet the criteria to get a signature or endorsement from the lecturer concerned. A technique or method is needed that can help the process of verifying the signatures of lecturers and teaching staff in an academic environment. One technique that might be used is to use image processing techniques. In this study a classification will be made between the genuine and forgery signature images as a verification process of the authenticity of the lecturer signatures obtained by students. The data used is the signature image of a lecturer at Amikom Purwokerto University who was a examiner at the Practical Task Seminar. The method proposed in the classification process uses the Support Vector Machine (SVM) algorithm with two different kernels. Both kernels consist of poly kernel and normalized poly kernel, the selection of the two kernels is used to compare which results are more optimal. The results of this study are SVM by using poly kernel normalization to be able to give better results when compared to using poly kernel only. The results obtained using poly kernel normalization are an accuracy level of 79.43% and a specificity level of 100%.
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分析内核比较结果与支持向量机的内核正常化,作为签名图像分类方法
签名是可以用于验证多种文件的重要特征之一,其中之一是学术文件。在学术环境中,签名验证是很重要的,特别是在确保讲师或教学人员签名的真实性方面。不少学生选择伪造讲师或教学人员的签名,以促进他们的学术进程,这是一个重要的问题,特别是如果学生实际上不符合资格,也不符合从有关讲师那里获得签名或背书的标准。需要一种技术或方法来帮助在学术环境中验证讲师和教学人员的签名。可能使用的一种技术是使用图像处理技术。在本研究中,将对真伪签名图像进行分类,作为学生获得的讲师签名真实性的验证过程。使用的数据是Amikom purokerto大学讲师的签名图像,他是实践任务研讨会的考官。该方法在分类过程中采用了两种不同核的支持向量机(SVM)算法。两种核都由多核和归一化多核组成,通过选择两种核来比较哪一种结果更优。本研究的结果表明,与仅使用多核归一化相比,使用多核归一化的支持向量机能够给出更好的结果。多核归一化的准确率为79.43%,特异性为100%。
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审稿时长
24 weeks
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