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Principal components space analysis for image and video classification

机译:用于图像和视频分类的主成分空间分析

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We present a new classification algorithm, principal component space analysis (PCNSA), which is designed for classification problems like object recognition where different classes have unequal and nonwhite noise covariance matrices. PCNSA first obtains a principal components subspace (PCA space) for the entire data. In this PCA space, it finds for each class "i", an M/sub i/-dimensional subspace along which the class' intraclass variance is the smallest. We call this subspace an approximate space (ANS) since the lowest variance is usually "much smaller" than the highest. A query is classified into class "i" if its distance from the class' mean in the class' ANS is a minimum. We derive upper bounds on classification error probability of PCNSA and use these expressions to compare classification performance of PCNSA with that of subspace linear discriminant analysis (SLDA). We propose a practical modification of PCNSA called progressive-PCNSA that also detects "new" (untrained classes). Finally, we provide an experimental comparison of PCNSA and progressive PCNSA with SLDA and PCA and also with other classification algorithms-linear SVMs, kernel PCA, kernel discriminant analysis, and kernel SLDA, for object recognition and face recognition under large pose/expression variation. We also show applications of PCNSA to two classification problems in video-an action retrieval problem and abnormal activity detection.
机译:我们提出了一种新的分类算法,主成分空间分析(PCNSA),该算法用于分类问题,例如对象识别,其中不同类别具有不相等和非白噪声协方差矩阵。 PCNSA首先获取整个数据的主成分子空间(PCA空间)。在这个PCA空间中,它为每个类“ i”找到一个M / sub i /维子空间,沿着该空间子类的类内差异最小。我们称此子空间为近似空间(ANS),因为最低方差通常比最高方差“小得多”。如果查询与类ANS中类的平均值的距离最小,则将其分类为类“ i”。我们推导了PCNSA的分类错误概率的上限,并使用这些表达式将PCNSA的分类性能与子空间线性判别分析(SLDA)进行了比较。我们提议对PCNSA进行实用的修改,称为progressive-PCNSA,它也可以检测“新”(未经训练的课程)。最后,我们提供了PCNSA和渐进式PCNSA与SLDA和PCA以及其他分类算法(线性SVM,核PCA,核判别分析和核SLDA)的实验比较,用于大姿势/表情变化下的对象识别和面部识别。我们还展示了PCNSA在视频中的两个分类问题上的应用-动作检索问题和异常活动检测。

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