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Vehicle Logo Recognition with Reduced-Dimension SIFT Vectors Using Autoencoders

机译:使用自动编码器的降维SIFT向量识别车辆徽标

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Vehicle logo recognition has become an important part of object recognition in recent years because of its usage in surveillance applications. In order to achieve a higher recognition rates, several methods are proposed, such as Scale Invariant Feature Transform (SIFT), convolutional neural networks, bag-of-words and their variations. A fast logo recognition method based on reduced-dimension SIFT vectors using autoencoders is proposed in this paper. Computational load is decreased by applying dimensionality reduction to SIFT feature vectors. Feature vectors of size 128 are reduced to 64 and 32 by employing two layer neural nets called vanilla autoencoders. Publicly available vehicle logo images are used for testing purposes. Results suggest that the proposed method needs half of the original SIFT based methoda??s memory requirement with decreased processing time per image in return of a decrease in the accuracy less than 20%.
机译:近年来,车辆徽标识别已成为对象识别的重要组成部分,因为它已在监视应用程序中使用。为了获得更高的识别率,提出了几种方法,例如尺度不变特征变换(SIFT),卷积神经网络,词袋及其变体。提出了一种基于降维SIFT矢量的自动编码器快速徽标识别方法。通过将降维应用于SIFT特征向量,可以减少计算负荷。通过使用称为香草自动编码器的两层神经网络,将大小为128的特征向量缩减为64和32。公开可用的车辆徽标图像用于测试目的。结果表明,所提出的方法需要原始基于SIFT的方法的一半存储需求,同时减少了每幅图像的处理时间,而准确性降低了不到20%。

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