从信号处理到监控的旅程

Tsuhan Chen
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引用次数: 0

摘要

传统上,信号处理被认为是简单的低级处理。然而,在过去的十年中,信号处理已经发展成为创建各种工具来解决高级问题的领域,这些问题通常只由计算机视觉或机器学习研究人员研究。例如,多分辨率分析创造了流行的图像特征,如SIFT(比例不变特征变换),统计分析产生了图形模型,如HMM(隐马尔可夫模型)和主题模型。在这次演讲中,我们将使用一个应用来说明信号处理的增长:对象发现,即以完全无监督的方式从一组图像中提取“感兴趣的对象”。对象发现通常基于SIFT等图像特征和主题模型,近年来在视频内容提取中受到了广泛关注。在这次演讲中,我们将概述这种方法,并将其从静止图像扩展到运动视频。我们将提出一个新的时空框架,将统计模型应用于外观建模和运动建模。将空间模型和时间模型相结合,使运动模糊可以通过外观来解决,外观模糊可以通过运动来解决。此外,我们可以提取对象之间的层次关系,完全由数据驱动,无需任何手动标记。该框架在视频检索(例如,YouTube或Google视频)和视频监控中得到应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A journey from signal processing to surveillance
Traditionally, signal processing is considered simply low-level processing. In the past decade, however, signal processing has grown to become the area where a variety of tools are created to solve high-level problems that conventionally would be studied by computer vision or machine learning researchers exclusively. For example, multiresolution analysis created popular image features like SIFT (scale-invariant feature transform), and statistical analysis gave birth to graphical models such as HMM (hidden Markov models) and topic models. In this talk, we will use one application to illustrate this growth of signal processing: object discovery, i.e., extracting the "object of interest" from a set of images in a completely unsupervised manner. Often based on image features like SIFT, and the topic models, object discovery has recently attracted a lot of attention in video content extraction. In this talk, we will outline this approach and extend it from still images to motion videos. We will propose a novel spatial-temporal framework that applies statistical models to both appearance modeling and motion modeling. The spatial and temporal models are integrated so that motion ambiguities can be resolved by appearance, and appearance ambiguities can be resolved by motion. In addition, we can extract hierarchical relationships among objects, completely driven by data without any manual labeling. This framework finds application in video retrieval (e.g., for YouTube or Google Video) and video surveillance.
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