An incremental principal component pursuit algorithm via projections onto the ℓ1 ball

P. Rodríguez, B. Wohlberg
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引用次数: 8

Abstract

Video background modeling, used to detect moving objects in digital videos, is a ubiquitous pre-processing step in computer vision applications. Principal Component Pursuit (PCP) PCP is among the leading methods for this problem. In this paper we proposed a new convex formulation for PCP, substituting the standard ℓ1 regularization with a projection onto the ℓ1-ball. This formulation offers an advantage over the known incremental PCP methods in practical parameter selection and ghosting suppression, while retaining the ability to be implemented in a fully incremental fashion, keeping all the desired properties related to such PCP methods (low memory footprint, adaptation to changes in the background, computational complexity that allows online processing).
基于投影的增量主成分追踪算法
视频背景建模用于检测数字视频中的运动物体,是计算机视觉应用中普遍存在的预处理步骤。主成分追踪(PCP)是解决这一问题的主要方法之一。本文提出了PCP的一个新的凸公式,用一个投影来代替标准的正则化。与已知的增量式PCP方法相比,该公式在实际参数选择和抑制重影方面具有优势,同时保留了以完全增量方式实现的能力,保留了与此类PCP方法相关的所有期望属性(低内存占用、对背景变化的适应、允许在线处理的计算复杂性)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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