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Concept-Aware Web Image Compression Based on Crowdsourced Salient Object Detection

机译:基于众包显着对象检测的概念感知Web图像压缩

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Reduced output quality and being unaware of content are among major issues with traditional image compression techniques. Such issues cause some critical problems when it comes to quality-intensive applications, including object/face detection and recognition, Web-based image viewers and management systems, etc. On the other side, efficiency of Web-based image search engines and retrieval systems in terms of user experience and usability could be affected. In order to cope with these challenges, a novel image compression method is proposed that takes advantages of collective human cognitive intelligence to detect the salient object(s) based on the recognized key concept(s). Then, other less-important regions/objects will be subject to the safe compression. Such an approach, besides preserving semantic aspects of the images that will result in smart (concept-aware) compression, could provide some crowdsourced labels for more efficient indexing and annotating of images. In this regard, two birds could be beaten with one stone: compressing Web images with respect to their content/concept and annotating them with crowd-suggested labels. The experimental results as well as user acceptance evaluation proved the efficacy of the introduced method.
机译:减少输出质量并不知意见内容是传统图像压缩技术的主要问题。此类问题涉及到质量密集型应用程序,包括对象/脸部检测和识别,基于网络的图像查看器和管理系统等。在另一边,基于Web的图像搜索引擎和检索系统的效率在用户体验和可用性方面可能会受到影响。为了应对这些挑战,提出了一种新颖的图像压缩方法,其利用集体人类认知智能来检测基于识别的关键概念的突出对象。然后,其他不太重要的区域/物体将受到安全压缩的影响。除了保留将导致智能(概念感知)压缩的图像的语义方面之外的方法,可以提供一些众群标签,以便更有效的索引和图像的注释。在这方面,可以用一块石头殴打两只鸟:压缩网页相对于他们的内容/概念,并用人群建议的标签注释它们。实验结果以及用户验收评估证明了引入方法的功效。

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