Online video object classification using fast similarity network fusion

Xianlong Lu, Chongyang Zhang, Xiaokang Yang
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引用次数: 5

Abstract

In this paper, we propose one online video object classification algorithm using fast Similarity Network Fusion (SNF). By constructing sample-similarity network for each data type and then efficiently fusing these networks into one single similarity network that represents the full spectrum of underlying data, SNF can efficiently identify subtypes among existing samples by clustering and predict labels for new samples based on the constructed network, which make it distinct in data integration or classification. The main problem of data online classification using SNF is its complexity. The proposed fast SNF (FSNF) in this work consists of two main steps: dividing the matrix into two parts and replacing the main part of testing matrix using the same part of training matrix. Since the main computation in SNF is to get the main part of matrix, this replacement can reduce most of the computation load. From the experiments based on online surveillance video object classification, it can be observed that: compared with SNF, the proposed FSNF can gain 16 times speed increasing with only 0.5%-0.6% accuracy losing; FSNF also significantly outperforms the existing traditional algorithms in classification accuracy.
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基于快速相似网络融合的在线视频对象分类
提出了一种基于快速相似网络融合(SNF)的在线视频目标分类算法。SNF通过为每种数据类型构建样本相似网络,然后将这些网络有效地融合成一个代表底层数据全谱的单一相似网络,通过聚类有效地识别现有样本中的亚型,并基于构建的网络预测新样本的标签,使其在数据集成或分类上具有独特性。使用SNF进行数据在线分类的主要问题是其复杂性。本文提出的快速SNF (FSNF)包括两个主要步骤:将矩阵分成两部分,并用训练矩阵的相同部分替换测试矩阵的主要部分。由于SNF的主要计算是获取矩阵的主要部分,这种替换可以减少大部分的计算负荷。从基于在线监控视频目标分类的实验中可以观察到:与SNF相比,所提出的FSNF在准确率仅损失0.5% ~ 0.6%的情况下,速度提高了16倍;FSNF在分类精度上也明显优于现有的传统算法。
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