用自编码器方法重建老学生图像

Candra Putra Negara, Azmi Badhi’uz Zaman, Dimas Aji Setiawan, Ahmad Azhari
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引用次数: 0

摘要

图像处理是用数字计算机对图像进行处理,根据用户的愿望产生新的图像。一种实现是重建图像。通过这些提取阶段都能够得到图像的特征。所使用的算法是Adam Optimization,这是随机梯度约简的扩展,在计算机视觉和自然语言处理的深度学习应用中得到了更广泛的应用。在本研究中,使用自动编码器技术,这是人工神经网络的一种变体,通常用于“编码”数据。自动编码器被训练成能够产生与输入相同的输出。这种图像重建的目的是对质量不是很清楚的图像进行处理,使其清晰。如果可能的话,这可以用来从一段距离的照片中检测某人的脸。在通过定义Conv2D和Maxpool进行编码和解码过程重建图像时,使用100次epoch对图像进行训练,而使用Keras库进行预测过程。最后一个的准确率是0.022。最后输出重建图像和计算图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction Old Students Image Using The Autoencoder Method
Image Processing is image processing with a digital computer to produce new images according to the user's wishes. One implementation is to reconstruct the image. Through the extraction stages are able to get the characteristics of an image. The algorithm used is Adam Optimization, which is an extension of the stochastic gradient reduction that has just seen wider adoption for deep learning applications in computer vision and natural language processing. In this study using the autoencoder technique, which is one variant of artificial neural networks that are generally used to "encode" data. Autoencoder is trained to be able to produce the same output as the input. This image reconstruction aims to process an image whose quality is not very clear to be clear. This if possible can be used to detect someone's face from a distance of photos. In reconstructing this image through the encode and decode process by defining Conv2D and Maxpool, it is processed into training with epoch 100 times while for the prediction process using Keras library. Then the last one gets an accuracy of 0,022. The final result is the output of the reconstructed image and calculation graph.
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