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Automatic image orientation detection with prior hierarchical content-based classification

机译:自动图像定向检测,基于先前的基于内容的分层分类

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This paper presents an algorithm for automatic detection of the orientation of user generated images. The images can initially be into 3 different orientations. The algorithm utilizes SVM classifier trained over feature vectors of the low-level characteristics of the images in the training set. In order to increase classification accuracy, prior to the SVM classification, the images are hierarchically pre-classified into different groups regarding to the semantic cues they contain, like presence and absence of sky, light, or human faces. Then separate SVM classifier is trained for each group. Also, the paper presents the conclusions of an online survey about the user preferences for software for automatic image orientation detection and gives explanation how those conclusions correspond to the accuracy of the proposed algorithm.
机译:本文提出了一种算法,用于自动检测用户生成图像的方向。图像最初可以分为3个不同的方向。该算法利用在训练集中图像的低级特征的特征向量上训练的SVM分类器。为了提高分类准确性,在SVM分类之前,根据图像所包含的语义线索(例如,是否存在天空,光线或人脸),将图像按层次结构预先分类为不同的组。然后为每个组训练单独的SVM分类器。此外,本文还提供了有关用户对用于自动图像方向检测的软件的偏好的在线调查的结论,并给出了这些结论如何与所提出算法的准确性相对应的解释。

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