Identical Twins Facial Recognition System Using Cloud

Chandrakala G Raju, Rahul S Hangal, R ShashidharaA, D SrinathaT
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引用次数: 1

Abstract

Facial recognition algorithm should be able to work even when the similar looking people are found i.e. also in the extreme case of identical looking twins. An experimental data set which contains 40 images of 20 pairs of twins collected randomly from the internet. The training is done with the selected images of the twins using different training algorithms and inbuilt functions available. The extracted features are stored over the Amazon public cloud. As a part of testing phase random images from the dataset trained are selected and upon running it over the system we get the features of those images which then will be compared by extracting the features already stored in Amazon cloud. The stored values and the current image features are compared and result will be displayed on the GUI. Identical twin’s facial recognition system uses the machine learning, image processing algorithms and deep learning algorithms. Regardless of the conditions of the images acquired, distinguishing identical twins is significantly harder than distinguishing faces that are not identical twins for all the algorithms.
使用云的同卵双胞胎面部识别系统
即使发现长相相似的人,面部识别算法也应该能够工作,也就是在长相相同的双胞胎的极端情况下。一个实验数据集,包含20对双胞胎的40张图片,随机从网上收集。使用不同的训练算法和可用的内置功能,对双胞胎的选定图像进行训练。提取的特性存储在Amazon公共云上。作为测试阶段的一部分,从训练过的数据集中选择随机图像,在系统上运行后,我们得到这些图像的特征,然后将通过提取已经存储在亚马逊云中的特征进行比较。将存储值与当前图像特征进行比较,结果将显示在GUI上。同卵双胞胎的面部识别系统使用了机器学习、图像处理算法和深度学习算法。无论获得的图像条件如何,对于所有算法来说,识别同卵双胞胎明显比识别非同卵双胞胎要困难得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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