信息量对SIFT描述符的影响

S. Lin, C. Wong, T. Ren, N. Kwok
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引用次数: 2

摘要

本文对尺度不变特征变换(SIFT)描述符进行了性能评价,该描述符利用不同大小的图像补丁来表示图像中的SIFT关键点。尽管SIFT在目标识别和图像配准等众多应用中得到了广泛的应用,但其对不同图像复杂性和变换的性能仍不清楚。因此,当SIFT描述符的维度(即信息量)发生变化时,开始对其性能进行评估。本文首先介绍了SIFT描述子的一般概念,然后描述了实验设置和评估指标,详细介绍了SIFT描述子的性能评估。实验结果通过重复性和召回精度两个评价指标得到验证。最后,讨论和结论包括强调在实验结果中观察到的意义,并强调未来工作的可能方向。
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The impact of information volume on SIFT descriptor
This paper provides a performance evaluation on the Scale- invariant Feature Transform (SIFT) descriptors that utilise different sizes of image patches to represent the SIFT keypoints in images. Although SIFT has been widely employed in numerous applications such as object recognition and image registration, its performances against different image complexities and transformations are still unclear. Thus, an evaluation is commenced to examine SIFT descriptor's performance while its dimension (i.e., information volume) is varied. This paper is started by providing the general concept of SIFT descriptor, then the experimental setup and evaluation metrics are described for detailing the performance evaluation. The experimental results are shown by two evaluation metrics that are repeatability and recall-precision. Lastly, discussions and conclusions are included to emphasise the significances observed in the experimental results and highlight possible directions for future work.
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