Effect of Changing Targeted Layers of the Deep Dream Technique Using VGG-16 Model

Lafta R. Al-khazraji, A. Abbas, A. S. Jamil
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引用次数: 2

Abstract

The deep dream is one of the most recent techniques in deep learning. It is used in many applications, such as decorating and modifying images with motifs and simulating the patients' hallucinations. This study presents a deep dream model that generates deep dream images using a convolutional neural network (CNN). Firstly, we survey the layers of each block in the network, then choose the required layers, and extract their features to maximize it. This process repeats several iterations as needed, computes the total loss, and extracts the final deep dream images. We apply this operation on different layers two times; the former is on the low-level layers, and the latter is on the high-level layers. The results of applying this operation are different, where the resulting image from applying deep dream on the high-level layers are clearer than those resulting from low-level layers. Also, the loss of the images of low-level layers ranges between 31.1435 and 31.1435, while the loss of the images of upper layers ranges between 20.0704 and 32.1625.
利用VGG-16模型改变深度梦技术的靶层效果
深度梦是深度学习的最新技术之一。它被用于许多应用,例如用图案装饰和修改图像,模拟患者的幻觉。本研究提出了一个深度梦模型,该模型使用卷积神经网络(CNN)生成深度梦图像。首先,我们对网络中每个块的层进行调查,然后选择所需的层,提取其特征以使其最大化。这个过程根据需要重复几次迭代,计算总损失,并提取最终的深梦图像。我们在不同的层上应用这个操作两次;前者位于低层,后者位于高层。应用该操作的结果是不同的,在高层应用深度梦得到的图像比在低层得到的图像更清晰。低层图像的损失在31.1435 ~ 31.1435之间,上层图像的损失在20.0704 ~ 32.1625之间。
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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