interimage:attributes_description
Diferenças
Aqui você vê as diferenças entre duas revisões dessa página.
Ambos lados da revisão anteriorRevisão anteriorPróxima revisão | Revisão anterior | ||
interimage:attributes_description [2010/06/23 19:44] – tkorting | interimage:attributes_description [2012/07/17 23:47] (atual) – rsilva | ||
---|---|---|---|
Linha 30: | Linha 30: | ||
* **yGeoCenter** - y geo-coordinate of the object centroid. | * **yGeoCenter** - y geo-coordinate of the object centroid. | ||
* **membership** or **p** - confidence in the object with regard to its classification. | * **membership** or **p** - confidence in the object with regard to its classification. | ||
+ | |||
+ | |||
+ | |||
===== Shape Attributes ===== | ===== Shape Attributes ===== | ||
- | * **area**: Returns the area of the given polygon, in number of pixels. | + | * **area** |
- | * **bBoxArea**: Returns the bounding box area of the given polygon, in number of pixels. | + | * **bBoxArea** |
- | * **perimeter**: Returns the perimeter of the polygon, considering the amount of pixels in its border. | + | * **perimeter** |
- | * **fractalDimension**: Returns the fractal dimension of a given polygon, which is calculated by the following equation: | + | * **fractalDimension** |
{{ : | {{ : | ||
Where P is the polygon perimeter and A is the area. | Where P is the polygon perimeter and A is the area. | ||
- | * **perimeterAreaRatio**: Calculates the ratio between the perimeter and the area of a polygon. | + | * **perimeterAreaRatio** |
- | * **compacity**: Returns the compacity of a given polygon, which is calculated by the following equation: | + | * **compacity** |
{{ : | {{ : | ||
Where P is the polygon perimeter and A is the area. | Where P is the polygon perimeter and A is the area. | ||
- | * **density**: The density of a polygon is calculated by the ratio between its area and its Radius (the maximum distance between the polygon centroid and all its vertices). | + | * **density** |
- | * **length**: The Length of a polygon is the height of its bounding box. | + | * **length** |
- | * **width**: The Width of a polygon is calculated by the width of its bounding box. | + | * **width** |
- | * **contiguity**: Contiguity index assesses the spatial connectedness of pixels within a polygon to provide an index of boundary configuration. | + | * **contiguity** |
- | * **gyrationRadius**: This attribute equals the mean distance between each pixel in the polygon and the polygon centroid. | + | * **gyrationRadius** |
- | * **angle**: The main angle of a polygon. It is obtained by calculating the best elliptic fit, and the angle of the bigest | + | * **angle** |
- | * **ellipticFit**: Finds the best ellipse which fits outside the polygon and returns the ratio between the polygon area and the ellipse area. | + | * **ellipticFit** |
- | * **squareness**: This attribute fits the minimum rectangle outside the polygon and calculates the ratio between the polygon area and the area of this rectangle. The most close to 1 is this attribute, the most similar to a rectangle the polygon is. | + | * **squareness** |
- | * **circleness**: It is calculated by the following equation: | + | * **circleness** |
{{ : | {{ : | ||
Where A is the polygon area and R is the maximum distance between the polygon centroid and all its vertices. | Where A is the polygon area and R is the maximum distance between the polygon centroid and all its vertices. | ||
- | * **shapeIndex**: Returns the shape index of a given polygon, which is calculated by the following equation: | + | * **shapeIndex** |
{{ : | {{ : | ||
Where P is the polygon perimeter and A is the area. | Where P is the polygon perimeter and A is the area. | ||
- | |||
- | |||
Linha 67: | Linha 68: | ||
===== Spectral Statistical Attributes ===== | ===== Spectral Statistical Attributes ===== | ||
- | * **Amplitude** - represents the difference between the maximum and minimum pixel values of a region | + | * **Amplitude** - represents the difference between the maximum and minimum pixel values of an object |
- | * **Brightness** - | + | * **Brightness** - represents the brightness of an image object. |
- | * **Correlation** - Correlation is a similarity measure between two data sets under an absolute scale between [-1,1]. It is calculated as showed | + | * **Correlation** - Correlation is a similarity measure between two data sets under an absolute scale between [-1,1]. It is calculated as shown by the next formula: |
{{ interimage: | {{ interimage: | ||
- | * **Covariance** - The covariance value represents the similarity degree between two data sets showing how correlated they are. Higher data correlation leads to higher covariance values. The calculus is showed | + | * **Covariance** - The covariance value represents the similarity degree between two data sets showing how correlated they are. Higher data correlation leads to higher covariance values. The calculus is shown by the following formula where N is the number of image elements for one given area. X(i) are the element values for each given index " |
{{ interimage: | {{ interimage: | ||
- | * **Entropy** - This is a randomness statistical measure that can be used to describe some texture features. Higher data randomness leads to higher entropy values. The calculus is done as showed | + | * **Entropy** - This is a randomness statistical measure that can be used to describe some texture features. Higher data randomness leads to higher entropy values. The calculus is done as shown by the next formula, where n is the number of distinct image element values and p(xi) is the occurrence frequence associated to that pixel value.: |
{{ interimage: | {{ interimage: | ||
Linha 87: | Linha 88: | ||
* **MinPixelValue** - The minimum pixel value found inside one region for the given image band/ | * **MinPixelValue** - The minimum pixel value found inside one region for the given image band/ | ||
- | * **Mode** - Represents the most frequent value among a set of values. There are cases where mode value cannot exist and there are cases where its value it is not garanteed | + | * **Mode** - Represents the most frequent value among a set of values. There are cases where a mode value cannot exist and there are cases where its value is not guaranteed |
* 1, | * 1, | ||
- | * 3, | + | * 3, |
* 3, | * 3, | ||
- | * **Ratio** - | + | * **Ratio** - represents the amount that layer **L** contributes to the total brightness of an image object. |
- | * **StdDeviation** - The standart | + | * **StdDeviation** - The standard |
{{ interimage: | {{ interimage: | ||
- | * **SumPixelsValues** - Represents the sum of all elements | + | * **SumPixelsValues** - Represents the sum of all element |
- | * **Variance** - Like the standart | + | * **Variance** - Like the standard |
{{ interimage: | {{ interimage: | ||
Linha 114: | Linha 115: | ||
===== Texture Attributes ===== | ===== Texture Attributes ===== | ||
- | The texture attributes are based on the co-occurence | + | The texture attributes are based on the co-occurrence |
- | * Textural Features for Image Classification - Robert M. Haralick, K. Shanmugam, Its' | + | * Textural Features for Image Classification - Robert M. Haralick, K. Shanmugam, Its' |
* Computer and Robot Vision - Robert M. Haralick - Addison-Wesley Publishing Company. | * Computer and Robot Vision - Robert M. Haralick - Addison-Wesley Publishing Company. | ||
\\ | \\ | ||
- | * **Angular2ndMomentGLCM (a.k.a. EnergyGLCM)** - Returns the square sum of image points | + | * **Angular2ndMomentGLCM (a.k.a. EnergyGLCM)** - Returns the square sum of image point pairs occurrences under one pre-defined direction. The returned |
{{ interimage: | {{ interimage: | ||
- | * **ContrastGLCM** - Returns a contrast intensity measure | + | * **ContrastGLCM** - Returns a contrast intensity measure |
{{ interimage: | {{ interimage: | ||
- | * **DissimilarityGLCM** - Returns one intensity measure quite similar to contrast between one point and its neighborhood. But the difference it that this measure has linear increments. The calculus is showed | + | * **DissimilarityGLCM** - Returns one intensity measure quite similar to contrast between one point and its neighborhood. But the difference it that this measure has linear increments. The calculus is shown on the next formula where " |
{{ interimage: | {{ interimage: | ||
- | * **EntropyGLCM** - Like the simple statistical entropy the GLCM entropy also is a statistical measure of image data randomness. The difference is that it uses frequencies of gray levels | + | * **EntropyGLCM** - Like the simple statistical entropy the GLCM entropy also is a statistical measure of image data randomness. The difference is that it uses frequencies of gray level co-ocurrences instead of using point value frequencies. The co-ocurrence |
{{ interimage: | {{ interimage: | ||
- | * **HomogeneityGLCM** - Returns a value representing the distance between the distribuition | + | * **HomogeneityGLCM** - Returns a value representing the distance between the distribution |
{{ interimage: | {{ interimage: | ||
- | * **MeanGLCM** - The GLCM mean value is expressed in function of the frequency of co-ocorrence | + | * **MeanGLCM** - The GLCM mean value is expressed in function of the frequency of co-occurrence |
{{ interimage: | {{ interimage: | ||
- | * **QuiSquareGLCM** - This metric can be understood as a form of energy normalization expressed in function of the linear dependency gray levels for image elements. The calculus is showed | + | * **QuiSquareGLCM** - This metric can be understood as a form of energy normalization expressed in function of the linear dependency gray levels for image elements. The calculus is shown by the next formulas where " |
{{ interimage: | {{ interimage: | ||
{{ interimage: | {{ interimage: | ||
Linha 143: | Linha 144: | ||
- | * **StdDeviationGLCM** - The standart | + | * **StdDeviationGLCM** - The standard |
{{ interimage: | {{ interimage: | ||
===== Neighborhood Attributes ===== | ===== Neighborhood Attributes ===== | ||
- | * **existenceOf** - existence of an neighbor object belonging to the selected class **C** in a certain range **R** (in pixels) around the image object. If at least one object is found the value is 1 (true), | + | * **existenceOf** - existence of an neighbor object belonging to the selected class **C** in a certain range **R** (in pixels) around the image object. If at least one object is found the value is 1 (true), |
* **numberOf** - number of neighbor objects belonging to the selected class **C** in a certain range **R** (in pixels) around the image object. The distance between the image object and its neighbors is calculated considering their centroids. If (**R**=0) only direct neighbors will be considered. | * **numberOf** - number of neighbor objects belonging to the selected class **C** in a certain range **R** (in pixels) around the image object. The distance between the image object and its neighbors is calculated considering their centroids. If (**R**=0) only direct neighbors will be considered. |
interimage/attributes_description.1277322277.txt.gz · Última modificação: 2010/06/23 19:44 por tkorting