从照片合成新兴图像

Cheng-Han Yang, Ying-Miao Kuo, Hung-Kuo Chu
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引用次数: 3

摘要

涌现是一种视觉现象,人类通过从无意义的碎片中收集信息,并感知到有意义的整体,从而在看似嘈杂的图像中识别出物体。这种独特的心理技能使涌现成为区分人类和机器的有效方案。可被人类检测到但难以被自动算法识别的图像也称为新兴图像。最近的一项最新研究提出了合成人类可以检测到但自动算法难以识别的3D物体图像的方法。他们的结果被进一步验证为人类很容易识别,但给自动机器带来了困难。然而,使用3D对象作为输入会阻碍他们的系统在生成无限数量的高质量图像时的实用性和可扩展性。例如,在3D域中,随着观看和光照条件的变化,图像质量可能会迅速下降,并且3D模型的可用资源通常是有限的。然而,使用3D对象作为输入会带来一些缺点。例如,结果的质量对3D域的观看和照明条件很敏感。三维模型的可用资源通常是有限的,这就限制了模型的可扩展性。本文提出了一种新的合成技术,用于从常规照片中自动生成新兴图像,这些照片通常是在体面的环境中拍摄的,并且可以在网上广泛访问。我们将以前的系统调整为输入照片的2D设置,并开发了一套基于图像的操作。我们的算法还可以通过有限的参数集来支持生成图像的难度控制。我们进行了几个实验来验证我们系统的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthesizing Emerging Images from Photographs
Emergence is the visual phenomenon by which humans recognize the objects in a seemingly noisy image through aggregating information from meaningless pieces and perceiving a whole that is meaningful. Such an unique mental skill renders emergence an effective scheme to tell humans and machines apart. Images that are detectable by human but difficult for an automatic algorithm to recognize are also referred as emerging images. A recent state-of-the-art work proposes to synthesize images of 3D objects that are detectable by human but difficult for an automatic algorithm to recognize. Their results are further verified to be easy for humans to recognize while posing a hard time for automatic machines. However, using 3D objects as inputs prevents their system from being practical and scalable for generating an infinite number of high quality images. For instance, the image quality may degrade quickly as the viewing and lighting conditions changing in 3D domain, and the available resources of 3D models are usually limited. However, using 3D objects as inputs brings drawbacks. For instance, the quality of results is sensitive to the viewing and lighting conditions in the 3D domain. The available resources of 3D models are usually limited, and thus restricts the scalability. This paper presents a novel synthesis technique to automatically generate emerging images from regular photographs, which are commonly taken with decent setting and widely accessible online. We adapt the previous system to the 2D setting of input photographs and develop a set of image-based operations. Our algorithm is also designed to support the difficulty level control of resultant images through a limited set of parameters. We conducted several experiments to validate the efficacy and efficiency of our system.
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