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Lacunarity, from the Latin
lacuna Lacuna (plural lacunas or lacunae) may refer to: Related to the meaning "gap" * Lacuna (manuscripts), a gap in a manuscript, inscription, text, painting, or musical work **Great Lacuna, a lacuna of eight leaves where there was heroic Old Norse po ...
, meaning "gap" or "lake", is a specialized term in
geometry Geometry (; ) is, with arithmetic, one of the oldest branches of mathematics. It is concerned with properties of space such as the distance, shape, size, and relative position of figures. A mathematician who works in the field of geometry is c ...
referring to a measure of how patterns, especially
fractal In mathematics, a fractal is a geometric shape containing detailed structure at arbitrarily small scales, usually having a fractal dimension strictly exceeding the topological dimension. Many fractals appear similar at various scales, as illu ...
s, fill space, where patterns having more or larger gaps generally have higher lacunarity. Beyond being an intuitive measure of gappiness, lacunarity can quantify additional features of patterns such as "rotational invariance" and more generally, heterogeneity. This is illustrated in Figure 1 showing three fractal patterns. When rotated 90°, the first two fairly homogeneous patterns do not appear to change, but the third more heterogeneous figure does change and has correspondingly higher lacunarity. The earliest reference to the term in geometry is usually attributed to
Benoit Mandelbrot Benoit B. Mandelbrot (20 November 1924 – 14 October 2010) was a Polish-born French-American mathematician and polymath with broad interests in the practical sciences, especially regarding what he labeled as "the art of roughness" of phy ...
, who, in 1983 or perhaps as early as 1977, introduced it as, in essence, an adjunct to
fractal analysis Fractal analysis is assessing fractal characteristics of data. It consists of several methods to assign a fractal dimension and other fractal characteristics to a dataset which may be a theoretical dataset, or a pattern or signal extracted from p ...
. Lacunarity analysis is now used to characterize patterns in a wide variety of fields and has application in multifractal analysis in particular (see
Applications Application may refer to: Mathematics and computing * Application software, computer software designed to help the user to perform specific tasks ** Application layer, an abstraction layer that specifies protocols and interface methods used in a c ...
).


Measuring lacunarity

In many patterns or data sets, lacunarity is not readily perceivable or quantifiable, so computer-aided methods have been developed to calculate it. As a measurable quantity, lacunarity is often denoted in scientific literature by the Greek letters \Lambda or \lambda but it is important to note that there is no single standard and several different methods exist to assess and interpret lacunarity.


Box counting lacunarity

One well-known method of determining lacunarity for patterns extracted from digital images uses
box counting Box counting is a method of gathering data for analyzing complex patterns by breaking a dataset, object, image, etc. into smaller and smaller pieces, typically "box"-shaped, and analyzing the pieces at each smaller scale. The essence of the pro ...
, the same essential algorithm typically used for some types of
fractal analysis Fractal analysis is assessing fractal characteristics of data. It consists of several methods to assign a fractal dimension and other fractal characteristics to a dataset which may be a theoretical dataset, or a pattern or signal extracted from p ...
. Similar to looking at a slide through a microscope with changing levels of magnification, box counting algorithms look at a digital image from many levels of resolution to examine how certain features change with the size of the element used to inspect the image. Basically, the arrangement of pixels is measured using traditionally square (i.e., box-shaped) elements from an arbitrary set of \Epsilon sizes, conventionally denoted \varepsilons. For each \varepsilon, a box of size \varepsilon is placed successively on the mage, in the end covering it completely, and each time it is laid down, the number of pixels that fall within the box is recorded.This contrasts with
box counting Box counting is a method of gathering data for analyzing complex patterns by breaking a dataset, object, image, etc. into smaller and smaller pieces, typically "box"-shaped, and analyzing the pieces at each smaller scale. The essence of the pro ...
fractal analysis where the ''total number of boxes that contained any pixels'' is counted to determine a fractal dimension.
In standard box counting, the box for each \varepsilon in \Epsilon is placed as though it were part of a grid overlaid on the image so that the box does not overlap itself, but in sliding box algorithms the box is slid over the image so that it overlaps itself and the "Sliding Box Lacunarity" or SLac is calculated. Figure 2 illustrates both types of box counting.


Calculations from box counting

The data gathered for each \varepsilon are manipulated to calculate lacunarity. One measure, denoted here as \lambda_\varepsilon, is found from the coefficient of variation (\mathit), calculated as the standard deviation (\sigma) divided by the mean (\mu), for pixels per box. Because the way an image is sampled will depend on the arbitrary starting location, for any image sampled at any \varepsilon there will be some number (\mathit) of possible orientations, each denoted here by \mathit, that the data can be gathered over, which can have varying effects on the measured distribution of pixels.See for an explanation of methods to address variation with grid location Equation shows the basic method of calculating \lambda_:


= Probability distributions

= Alternatively, some methods sort the numbers of pixels counted into a probability distribution having B bins, and use the bin sizes (masses, m) and their corresponding probabilities (p) to calculate \lambda_ according to Equations through :


Interpreting ''λ''

Lacunarity based on \lambda_ has been assessed in several ways including by using the variation in or the average value of \lambda_ for each \varepsilon (see Equation ) and by using the variation in or average over all grids (see Equation ).


= Relationship to the fractal dimension

= Lacunarity analyses using the types of values discussed above have shown that data sets extracted from dense fractals, from patterns that change little when rotated, or from patterns that are homogeneous, have low lacunarity, but as these features increase, so generally does lacunarity. In some instances, it has been demonstrated that fractal dimensions and values of lacunarity were correlated, but more recent research has shown that this relationship does not hold for all types of patterns and measures of lacunarity. Indeed, as Mandelbrot originally proposed, lacunarity has been shown to be useful in discerning amongst patterns (e.g., fractals, textures, etc.) that share or have similar
fractal dimension In mathematics, more specifically in fractal geometry, a fractal dimension is a ratio providing a statistical index of complexity comparing how detail in a pattern (strictly speaking, a fractal pattern) changes with the scale at which it is meas ...
s in a variety of scientific fields including neuroscience.


Graphical lacunarity

Other methods of assessing lacunarity from box counting data use the relationship between values of lacunarity (e.g., \lambda_) and \varepsilon in different ways from the ones noted above. One such method looks at the \ln vs \ln plot of these values. According to this method, the curve itself can be analyzed visually, or the slope at \mathit can be calculated from the \ln vs \ln regression line. Because they tend to behave in certain ways for respectively mono-, multi-, and non-fractal patterns, \ln vs \ln lacunarity plots have been used to supplement methods of classifying such patterns. To make the plots for this type of analysis, the data from box counting first have to be transformed as in Equation : This transformation avoids undefined values, which is important because homogeneous images will have \sigma at some \varepsilon equal to 0 so that the slope of the \ln vs \ln regression line would be impossible to find. With f \lambda_, homogeneous images have a slope of 0, corresponding intuitively to the idea of no rotational or translational invariance and no gaps. One box counting technique using a "gliding" box calculates lacunarity according to: S_i is the number of filled data points in the box and Q(S_i,r) the normalized frequency distribution of S_i for different box sizes.


Prefactor lacunarity

Another proposed way of assessing lacunarity using box counting, the ''Prefactor'' method, is based on the value obtained from box counting for the fractal dimension (D_B). This statistic uses the variable A from the scaling rule N = A \varepsilon^, where A is calculated from the y-intercept (\mathit) of the ln-ln regression line for \varepsilon and either the count (N) of boxes that had any pixels at all in them or else m at g. A is particularly affected by image size and the way data are gathered, especially by the lower limit of \varepsilons used. The final measure is calculated as shown in Equations through :


Applications

Below is a list of some fields where lacunarity plays an important role, along with links to relevant research illustrating practical uses of lacunarity. * Ecology * Physics * Archaeology *
Medical imaging Medical imaging is the technique and process of imaging the interior of a body for clinical analysis and medical intervention, as well as visual representation of the function of some organs or tissues (physiology). Medical imaging seeks to rev ...
* Urban
spatial analysis Spatial analysis or spatial statistics includes any of the formal techniques which studies entities using their topological, geometric, or geographic properties. Spatial analysis includes a variety of techniques, many still in their early deve ...
* Seismic studies * Dentistry * Food science


Notes


References


External links

*{{cite web , title=FracLac User's Guide , url=http://rsbweb.nih.gov/ij/plugins/fraclac/FLHelp/Lacunarity.htm#heterogeneity , ref={{harvid, FracLac An online guide to lacunarity theory and analysis using free, open source biological imaging software. Geometry