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Proceedings of the 2nd International Workshop on Robust Understanding of Low-quality Multimedia Data: Unitive Enhancement, Analysis and Evaluation最新文献

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Visual Signal Assessment, Analysis and Enhancement for Low-resolution or Varying-illumination Environment 低分辨率或变照度环境下的视觉信号评估、分析与增强
Weisi Lin
More often than not, practical application scenarios call for systems to be capable of dealing with input visual signals with low resolution/quality or environmental illumination. This talk will introduce related recent research in super-resolution reconstruction, signal quality assessment, content enhancement, and person re-identification for low-resolution or varying illumination. We will also discuss possible new research attempts to advance the relevant techniques.
通常情况下,实际应用场景要求系统能够处理低分辨率/质量或环境照明的输入视觉信号。本讲座将介绍超分辨率重建、信号质量评估、内容增强、低分辨率或变光照下的人再识别等方面的最新研究成果。我们还将讨论可能的新研究尝试,以推进相关技术。
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引用次数: 0
In-training Restoration Models Matter: Data Augmentation for Degraded-reference Image Quality Assessment 训练中的恢复模型很重要:退化参考图像质量评估的数据增强
Jiazhi Du, Dongwei Ren, Yue Cao, W. Zuo
Full-Reference Image Quality Assessment (FR-IQA) metrics such as PSNR, SSIM, and LPIPS have been widely adopted for evaluating image restoration (IR) methods. However, pristine-quality images are usually not available, making inferior No-Reference Image Quality Assessment (NR-IQA) metrics seem to be the only solutions in practical applications. Fortunately, when evaluating image restoration methods, paired degraded and restoration images are generally available. Thus, this paper takes a step forward to develop a Degraded-Reference IQA (DR-IQA) model while respecting its correspondence with FR-IQA metrics. To this end, we adopt a simple encoder-decoder as DR-IQA model, and take paired degraded and restoration images as the input to predict distortion maps guided by FR-IQA metrics. More importantly, due to the diversity and continuous development of image restoration models, it is difficult to make the DR-IQA model learned based on a specific restoration model generalize well to other ones. To address this issue, we augment the DR-IQA training samples by adding the results produced by in-training restoration models. Benefiting from the diversity of training samples, our learned DR-IQA model generalizes well to unseen restoration models. We respectively test our DR-IQA models on various image restoration tasks,e.g., denoising, super-resolution, JPEG deblocking, and complicated degradations, where our method can further close the performance gap between FR-IQA metrics and the state-of-the-art NR-IQA methods. Moreover, experiments also show the effectiveness of our method in performance comparison and model selection of image restoration models without ground-truth clean images. Source code will be made publicly available.
全参考图像质量评估(FR-IQA)指标如PSNR、SSIM和LPIPS已被广泛用于评估图像恢复(IR)方法。然而,原始质量的图像通常是不可用的,使得劣质的无参考图像质量评估(NR-IQA)指标似乎是在实际应用中唯一的解决方案。幸运的是,在评估图像恢复方法时,通常可以使用成对的降级和恢复图像。因此,本文向前迈进了一步,开发了退化参考IQA (DR-IQA)模型,同时尊重其与FR-IQA指标的对应关系。为此,我们采用简单的编码器-解码器作为DR-IQA模型,并以配对的退化和恢复图像作为输入,在FR-IQA指标的指导下预测失真图。更重要的是,由于图像恢复模型的多样性和不断发展,基于特定恢复模型学习的DR-IQA模型很难很好地推广到其他模型。为了解决这个问题,我们通过添加训练中恢复模型产生的结果来增强DR-IQA训练样本。得益于训练样本的多样性,我们学习的DR-IQA模型可以很好地推广到未知的恢复模型。我们分别在不同的图像恢复任务上测试了我们的DR-IQA模型。在这些方面,我们的方法可以进一步缩小FR-IQA指标与最先进的NR-IQA方法之间的性能差距。此外,实验还证明了该方法在无真实图像的图像恢复模型的性能比较和模型选择方面的有效性。源代码将公开提供。
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引用次数: 0
Unlocking the Potential of Disentangled Representation for Robust Media Understanding 为稳健的媒体理解释放解纠缠表示的潜力
Wenjun Zeng
It has been argued that for AI to fundamentally understand the world around us, it must learn to identify and disentangle the underlying explanatory factors hidden in the observed environment of low-level sensory data. In this talk, I will first provide an overview of the recent developments in disentangled representation learning and identify some major trends. I will then present some applications of this powerful concept for robust media processing and understanding in tasks such as image restoration, super-resolution, classification, person re-ID, depth estimation, etc. I will also discuss some future directions.
有人认为,人工智能要想从根本上理解我们周围的世界,就必须学会识别和解开隐藏在低水平感知数据观察环境中的潜在解释因素。在这次演讲中,我将首先概述解纠缠表示学习的最新发展,并确定一些主要趋势。然后,我将介绍这一强大概念在鲁棒媒体处理和理解方面的一些应用,如图像恢复、超分辨率、分类、人员重新识别、深度估计等任务。我还将讨论一些未来的方向。
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引用次数: 0
Advances of Computational Imaging on Mobile Phones 手机计算成像技术进展
Jinwei Gu
Computational imaging refers to sensing the real world with optimally designed, task-specific, multi-modality image sensors and optics which actively probes key visual information. Together with advances in AI algorithms and powerful hardware, computational imaging has significantly improved the image and video quality of mobile phones in many aspects, which not only benefits computer vision tasks but also results in novel hardware, such as AI image sensors, AI ISP (Image Signal Processing) chips, and AI camera systems. In this talk, I will present several latest research results including high quality image restoration and accurate depth estimation from time-of-flight sensors or monocular videos, as well as some latest computational photography products in smart phones including under-display cameras, AI image sensors and AI ISP chips. I will also layout several open challenges and future research directions in this area.
计算成像是指通过优化设计的、特定任务的、多模态的图像传感器和光学元件来感知现实世界,这些传感器和光学元件主动探测关键的视觉信息。随着人工智能算法和强大硬件的进步,计算成像在许多方面显著提高了手机的图像和视频质量,这不仅有利于计算机视觉任务,而且还导致了新颖的硬件,如人工智能图像传感器,人工智能ISP(图像信号处理)芯片和人工智能相机系统。在这次演讲中,我将介绍几项最新的研究成果,包括从飞行时间传感器或单目视频中获得高质量的图像恢复和精确的深度估计,以及智能手机中最新的计算摄影产品,包括屏下相机,人工智能图像传感器和人工智能ISP芯片。我还将提出这一领域的几个开放挑战和未来的研究方向。
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引用次数: 0
Proceedings of the 2nd International Workshop on Robust Understanding of Low-quality Multimedia Data: Unitive Enhancement, Analysis and Evaluation 第二届对低质量多媒体数据的稳健理解国际研讨会论文集:统一增强、分析和评估
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引用次数: 0
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Proceedings of the 2nd International Workshop on Robust Understanding of Low-quality Multimedia Data: Unitive Enhancement, Analysis and Evaluation
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