Hessian-affine
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The Hessian affine region detector is a feature detector used in the fields of
computer vision Computer vision tasks include methods for image sensor, acquiring, Image processing, processing, Image analysis, analyzing, and understanding digital images, and extraction of high-dimensional data from the real world in order to produce numerical ...
and
image analysis Image analysis or imagery analysis is the extraction of meaningful information from images; mainly from digital images by means of digital image processing techniques. Image analysis tasks can be as simple as reading barcode, bar coded tags or a ...
. Like other feature detectors, the Hessian affine detector is typically used as a preprocessing step to algorithms that rely on identifiable, characteristic interest points. The Hessian affine detector is part of the subclass of feature detectors known as ''affine-invariant'' detectors: Harris affine region detector, Hessian affine regions, maximally stable extremal regions, Kadir–Brady saliency detector, edge-based regions (EBR) and intensity-extrema-based (IBR) regions.


Algorithm description

The Hessian affine detector algorithm is almost identical to the Harris affine region detector. In fact, both algorithms were derived b
Krystian Mikolajczyk
an
Cordelia Schmid
in 2002,Mikolajczyk, K. and Schmid, C. 2002. An affine invariant interest point detector. In ''Proceedings of the 8th International Conference on Computer Vision'', Vancouver, Canada.
/ref> based on earlier work in,Lindeberg, Tony. "Feature detection with automatic scale selection", International Journal of Computer Vision, 30, 2, pp. 77–116, 1998.
/ref> see also for a more general overview.


How does the Hessian affine differ?

The Harris affine detector relies on interest points detected at multiple scales using the Harris corner measure on the second-moment matrix. The Hessian affine also uses a multiple scale iterative algorithm to spatially localize and select scale and affine invariant points. However, at each individual scale, the Hessian affine detector chooses interest points based on the
Hessian matrix In mathematics, the Hessian matrix, Hessian or (less commonly) Hesse matrix is a square matrix of second-order partial derivatives of a scalar-valued Function (mathematics), function, or scalar field. It describes the local curvature of a functio ...
at that point: H(\mathbf) = \begin L_(\mathbf) & L_(\mathbf)\\ L_(\mathbf) & L_(\mathbf)\\ \end where L_(\mathbf) is second partial derivative in the a direction and L_(\mathbf) is the mixed partial second derivative in the a and b directions. It's important to note that the derivatives are computed in the current iteration scale and thus are derivatives of an image smoothed by a Gaussian kernel: L(\mathbf) = g(\sigma_I) \otimes I(\mathbf) . As discussed in the Harris affine region detector article, the derivatives must be scaled appropriately by a factor related to the Gaussian kernel: \sigma_I^2. At each scale, interest points are those points that simultaneously are local extrema of both the
determinant In mathematics, the determinant is a Scalar (mathematics), scalar-valued function (mathematics), function of the entries of a square matrix. The determinant of a matrix is commonly denoted , , or . Its value characterizes some properties of the ...
and trace of the Hessian matrix. The trace of Hessian matrix is identical to the
Laplacian of Gaussian In computer vision and image processing, blob detection methods are aimed at detecting regions in a digital image that differ in properties, such as brightness or color, compared to surrounding regions. Informally, a ''blob'' is a region of a ...
s (LoG):Mikolajczyk K. and Schmid, C. 2004. Scale & affine invariant interest point detectors. ''International Journal on Computer Vision'' 60(1):63–86.
/ref> \begin DET = \sigma_I^2 ( L_L_(\mathbf) - L_^2(\mathbf)) \\ TR = \sigma_I (L_ + L_) \end As discussed in Mikolajczyk et al.(2005), by choosing points that maximize the determinant of the Hessian, this measure penalizes longer structures that have small second derivatives (signal changes) in a single direction.K. Mikolajczyk, T. Tuytelaars, C. Schmid, A. Zisserman, J. Matas, F. Schaffalitzky, T. Kadir and L. Van Gool, A comparison of affine region detectors. In IJCV 65(1/2):43-72, 2005
/ref> This type of measure is very similar to the measures used in the
blob detection In computer vision and image processing, blob detection methods are aimed at detecting regions in a digital image that differ in properties, such as brightness or color, compared to surrounding regions. Informally, a ''blob'' is a region of an ...
schemes proposed by Lindeberg (1998), where either the Laplacian or the determinant of the Hessian were used in blob detection methods with automatic scale selection. Like the Harris affine algorithm, these interest points based on the Hessian matrix are also spatially localized using an iterative search based on the Laplacian of Gaussians. Predictably, these interest points are called Hessian–Laplace interest points. Furthermore, using these initially detected points, the Hessian affine detector uses an iterative shape adaptation algorithm to compute the local affine transformation for each interest point. The implementation of this algorithm is almost identical to that of the Harris affine detector; however, the above mentioned Hessian measure replaces all instances of the Harris corner measure.


Robustness to affine and other transformations

Mikolajczyk et al. (2005) have done a thorough analysis of several state of the art affine region detectors: Harris affine, Hessian affine, MSER, IBR & EBR and salientT. Kadir, A. Zisserman, and M. Brady, An affine invariant salient region detector. In ECCV pp. 404–416, 2004.
/ref> detectors. Mikolajczyk et al. analyzed both structured images and textured images in their evaluation. Linux binaries of the detectors and their test images are freely available at their webpage. A brief summary of the results of Mikolajczyk et al. (2005) follow; se
''A comparison of affine region detectors''
for a more quantitative analysis. Overall, the Hessian affine detector performs second best to MSER. Like the Harris affine detector, Hessian affine interest regions tend to be more numerous and smaller than other detectors. For a single image, the Hessian affine detector typically identifies more reliable regions than the Harris-Affine detector. The performance changes depending on the type of scene being analyzed. The Hessian affine detector responds well to textured scenes in which there are a lot of corner-like parts. However, for some structured scenes, like buildings, the Hessian affine detector performs very well. This is complementary to MSER that tends to do better with well structured (segmentable) scenes.


Software packages


Affine Covariant Features
K. Mikolajczyk maintains a web page that contains Linux binaries of the Hessian-Affine detector in addition to other detectors and descriptors. Matlab code is also available that can be used to illustrate and compute the repeatability of various detectors. Code and images are also available to duplicate the results found in the Mikolajczyk et al. (2005) paper.

: – binary code for Linux, Windows and SunOS from VIREO research group, see more from th


See also

* Affine shape adaptation *
Isotropy In physics and geometry, isotropy () is uniformity in all orientations. Precise definitions depend on the subject area. Exceptions, or inequalities, are frequently indicated by the prefix ' or ', hence ''anisotropy''. ''Anisotropy'' is also u ...


References


External links



– Presentation slides from Mikolajczyk et al. on their 2005 paper.

– Cordelia Schmid's Computer Vision Lab

– Code, test Images, bibliography of Affine Covariant Features maintained by Krystian Mikolajczyk and th
Visual Geometry Group
from the Robotics group at the University of Oxford.

– Bibliography of feature (and blob) detectors maintained by USC Institute for Robotics and Intelligent Systems {{DEFAULTSORT:Hessian Affine Region Detector Feature detection (computer vision)