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Leveraging Smart Devices for Scene Text Preserved Image Stylization: A Deep Gaming Approach

机译:利用智能设备用于场景文本保留图像风格化:深度游戏方法

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摘要

With the rapid advancement of real-time rendering quality in digital art, the use of computer vision techniques has become popular in producing aesthetically pleasing stylized images of natural scenes. However, the processing time to produce a stylized image is high, especially in resource-constrained environments, such as smart devices. Most stylized imaging approaches are unable to preserve the fine details of the natural scene images, such as texts, symbols, and logos in the painted image, which leads to the loss of significant semantic information. In this article, we propose a fast image stylization framework (digital oil painting) using incremental histogramming that preserves the text content of natural scenes while efficiently painting it in resource-constrained environments. We design a stable multiplayer stochastic game with deep networks to classify regions into text or nontext using deep networks. We propose a multiscale fully convolutional character level text detector (xEASTLite) to detect the presence of a text character or part of a character with high accuracy. We have used different publicly available datasets in smart devices to illustrate the efficacy of the framework.
机译:随着数字艺术中实时渲染质量的快速进步,计算机视觉技术的使用已经在生产美学上令人愉悦的自然场景图像方面变得流行。然而,产生风格化图像的处理时间很高,尤其是在资源受限环境中,例如智能设备。大多数风格化成像方法无法保留自然场景图像的细节,例如绘制图像中的文本,符号和徽标,这导致了显着的语义信息的丢失。在本文中,我们提出了一种快速的图像风格化框架(数字油画),使用增量直方图,保留自然场景的文本内容,同时有效地将其绘制在资源受限环境中。我们设计具有深网络的稳定多人随机游戏,将区域分类为使用深网络的文本或非文本。我们提出了一个多尺度完全卷积的字符级文本检测器(XeastLite),以检测具有高精度的文本字符或角色的一部分。我们在智能设备中使用了不同的公共可用数据集来说明框架的功效。

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