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Linear dimensionality reduction applied to scale invariant feature transformation and speeded up robust feature descriptors

机译:线性降维应用于尺度不变特征变换并加快鲁棒特征描述符的速度

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摘要

Robust local descriptors usually consist of high-dimensional feature vectors to describe distinctive characteristics of images. The high dimensionality of a feature vector incurs considerable costs in terms of computational time and storage. It also results in the curse of dimensionality that affects the performance of several tasks that use feature vectors, such as matching, retrieval, and classification of images. To address these problems, it is possible to employ some dimensionality reduction techniques, leading frequently to information lost and, consequently, accuracy reduction. This work aims at applying linear dimensionality reduction to the scale invariant feature transformation and speeded up robust feature descriptors. The objective is to demonstrate that even risking the decrease of the accuracy of the feature vectors, it results in a satisfactory trade-off between computational time and storage requirements. We perform linear dimensionality reduction through random projections, principal component analysis, linear discriminant analysis, and partial least squares in order to create lower dimensional feature vectors. These new reduced descriptors lead us to less computational time and memory storage requirements, even improving accuracy in some cases. We evaluate reduced feature vectors in a matching application, as well as their distinctiveness in image retrieval. Finally, we assess the computational time and storage requirements by comparing the original and the reduced feature vectors.
机译:鲁棒的局部描述符通常由高维特征向量组成,以描述图像的独特特征。特征向量的高维数在计算时间和存储方面招致相当大的成本。它还会导致维度的诅咒,从而影响使用特征向量的多个任务的性能,例如图像的匹配,检索和分类。为了解决这些问题,可以采用某些降维技术,从而经常导致信息丢失,并因此导致精度降低。这项工作旨在将线性降维应用于尺度不变特征变换并加快鲁棒特征描述符的速度。目的是证明即使冒着降低特征向量准确性的风险,也可以在计算时间和存储需求之间取得令人满意的折衷。我们通过随机投影,主成分分析,线性判别分析和偏最小二乘法执行线性降维,以创建较低维的特征向量。这些新的简化描述符使我们减少了计算时间和内存存储需求,甚至在某些情况下甚至提高了准确性。我们在匹配的应用程序中评估缩小的特征向量,以及它们在图像检索中的独特性。最后,我们通过比较原始特征向量和简化特征向量来评估计算时间和存储要求。

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