2013
DOI: 10.1007/978-3-642-38267-3_30
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Image Matching Using Generalized Scale-Space Interest Points

Abstract: The performance of matching and object recognition methods based on interest points depends on both the properties of the underlying interest points and the choice of associated image descriptors. This paper demonstrates advantages of using generalized scale-space interest point detectors in this context for selecting a sparse set of points for computing image descriptors for image-based matching. For detecting interest points at any given scale, we make use of the Laplacian ∇ 2 norm L, the determinant of the … Show more

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Cited by 83 publications
(99 citation statements)
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References 70 publications
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“…Figure 11 shows the segmentation results for the mentioned algorithms and for the operator defined by Eq. (9). We can observe that, while the defined operator is robust to different classes of ill-illuminated images, the performance of the other methods was significantly affected.…”
Section: Applications On Binary Image Segmentationmentioning
confidence: 89%
See 1 more Smart Citation
“…Figure 11 shows the segmentation results for the mentioned algorithms and for the operator defined by Eq. (9). We can observe that, while the defined operator is robust to different classes of ill-illuminated images, the performance of the other methods was significantly affected.…”
Section: Applications On Binary Image Segmentationmentioning
confidence: 89%
“…[9][10][11] In the following, after a brief review of the classical linear scale-space, we concentrate on the morphological scale-spaces, which possess particular feature-preserving advantages for image processing applications.…”
Section: Scale-space Main Propertiesmentioning
confidence: 99%
“…Shi-Tomasi was an improved form of Harris [17][18][19] that was determined by gray variation of an image. The Taylor expansion of a gray variation of one image can be expressed as:…”
Section: Coarse-to-fine Inspection Policy For Feature Detectionmentioning
confidence: 99%
“…On one hand, algorithms of image analysis and optimization are used and information cards are produced from the series of photographs sent by the mobile application. On the other hand, the precise morphological measurement of the teeth resulting from the initial 3D model of patients' arches in occlusion will permit the calculation of a revised version of the 3D model of the arches 1,10,21,27,39 .…”
Section: Preventing Complicationsmentioning
confidence: 99%