Difference between revisions of "Example Associate Interest Points"

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= Detect Interest Point Example =
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To determine the motion between two frames parts of each frame need to be associated with each other.  The standard approach when using interest points to first detect the interest points, compute descriptions of them, then associate the features togetherOnce associated other algorithms can be used to extract the relationship between each image.
A common problem for many computer vision applications is matching features observed in two or more images.  Below is an example of how this can be accomplished using interest point and their descriptions.  When run, you can click on the image to select individual points or drag a region to select several.
 
This example code shows how to describe and associate point features using the DescribeRegionPoint and GeneralAssociation interfaces, respectively.  Note that not all feature descriptors perform well when using this interface.  For example, BRIEF is much slower when using this abstraction.


Example Code:
Example Code:
* [https://github.com/lessthanoptimal/BoofCV/blob/master/examples/src/boofcv/examples/ExampleAssociatePoints.java ExampleAssociatePoints.java]
* [https://github.com/lessthanoptimal/BoofCV/tree/v0.40/examples/src/main/java/boofcv/examples/features/ExampleAssociatePoints.java ExampleAssociatePoints.java]


Concepts:
Concepts:
* Describe point features
* Describe point features
* Associate descriptions
* Associate descriptions
Relevant Applets:
* [[Applet_Description_Region| Describe Points]]
* [[Applet_Associate_Points| Associate Points]]


= Example Code =
= Example Code =


<syntaxhighlight lang="java">
<syntaxhighlight lang="java">
public class ExampleAssociatePoints<T extends ImageSingleBand> {
/**
* After interest points have been detected in two images the next step is to associate the two
* sets of images so that the relationship can be found. This is done by computing descriptors for
* each detected feature and associating them together. In the code below abstracted interfaces are
* used to allow different algorithms to be easily used. The cost of this abstraction is that detector/descriptor
* specific information is thrown away, potentially slowing down or degrading performance.
*
* @author Peter Abeles
*/
public class ExampleAssociatePoints<T extends ImageGray<T>, TD extends TupleDesc<TD>> {


// algorithm used to detect interest points
// algorithm used to detect and describe interest points
InterestPointDetector<T> detector;
DetectDescribePoint<T, TD> detDesc;
// algorithm used to describe each interest point based on local pixels
DescribeRegionPoint<T> describe;
// Associated descriptions together by minimizing an error metric
// Associated descriptions together by minimizing an error metric
GeneralAssociation<TupleDesc_F64> associate;
AssociateDescription<TD> associate;


// location of interest points
// location of interest points
List<Point2D_F64> pointsA;
public List<Point2D_F64> pointsA;
List<Point2D_F64> pointsB;
public List<Point2D_F64> pointsB;


Class<T> imageType;
Class<T> imageType;


public ExampleAssociatePoints(InterestPointDetector<T> detector,
public ExampleAssociatePoints( DetectDescribePoint<T, TD> detDesc,
  DescribeRegionPoint<T> describe,
  AssociateDescription<TD> associate,
  GeneralAssociation<TupleDesc_F64> associate,
  Class<T> imageType ) {
  Class<T> imageType) {
this.detDesc = detDesc;
this.detector = detector;
this.describe = describe;
this.associate = associate;
this.associate = associate;
this.imageType = imageType;
this.imageType = imageType;
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/**
/**
* Detect and associate point features in the two images. Display the results.
* Detect and associate point features in the two images. Display the results.
*/
*/
public void associate( BufferedImage imageA , BufferedImage imageB )
public void associate( BufferedImage imageA, BufferedImage imageB ) {
{
T inputA = ConvertBufferedImage.convertFromSingle(imageA, null, imageType);
T inputA = ConvertBufferedImage.convertFromSingle(imageA, null, imageType);
T inputB = ConvertBufferedImage.convertFromSingle(imageB, null, imageType);
T inputB = ConvertBufferedImage.convertFromSingle(imageB, null, imageType);


// stores the location of detected interest points
// stores the location of detected interest points
pointsA = new ArrayList<Point2D_F64>();
pointsA = new ArrayList<>();
pointsB = new ArrayList<Point2D_F64>();
pointsB = new ArrayList<>();


// stores the description of detected interest points
// stores the description of detected interest points
FastQueue<TupleDesc_F64> descA = new TupleDescQueue(describe.getDescriptionLength(),true);
DogArray<TD> descA = UtilFeature.createArray(detDesc, 100);
FastQueue<TupleDesc_F64> descB = new TupleDescQueue(describe.getDescriptionLength(),true);
DogArray<TD> descB = UtilFeature.createArray(detDesc, 100);


// describe each image using interest points
// describe each image using interest points
describeImage(inputA,pointsA,descA);
describeImage(inputA, pointsA, descA);
describeImage(inputB,pointsB,descB);
describeImage(inputB, pointsB, descB);


// Associate features between the two images
// Associate features between the two images
associate.associate(descA,descB);
associate.setSource(descA);
associate.setDestination(descB);
associate.associate();


// display the results
// display the results
AssociationPanel panel = new AssociationPanel(20);
AssociationPanel panel = new AssociationPanel(20);
panel.setAssociation(pointsA,pointsB,associate.getMatches());
panel.setAssociation(pointsA, pointsB, associate.getMatches());
panel.setImages(imageA,imageB);
panel.setImages(imageA, imageB);


ShowImages.showWindow(panel,"Associated Features");
ShowImages.showWindow(panel, "Associated Features", true);
}
}


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* Detects features inside the two images and computes descriptions at those points.
* Detects features inside the two images and computes descriptions at those points.
*/
*/
private void describeImage(T input, List<Point2D_F64> points, FastQueue<TupleDesc_F64> descs )
private void describeImage( T input, List<Point2D_F64> points, DogArray<TD> descs ) {
{
detDesc.detect(input);
detector.detect(input);
describe.setImage(input);


descs.reset();
for (int i = 0; i < detDesc.getNumberOfFeatures(); i++) {
TupleDesc_F64 desc = descs.pop();
points.add(detDesc.getLocation(i).copy());
for( int i = 0; i < detector.getNumberOfFeatures(); i++ ) {
descs.grow().setTo(detDesc.getDescription(i));
// get the feature location info
Point2D_F64 p = detector.getLocation(i);
double yaw = detector.getOrientation(i);
double scale = detector.getScale(i);
 
// extract the description and save the results into the provided description
if( describe.process(p.x,p.y,yaw,scale,desc) != null ) {
points.add(p.copy());
desc = descs.pop();
}
}
}
// remove the last element from the queue, which has not been used.
descs.removeTail();
}
}


public static void main( String args[] ) {
public static void main( String[] args ) {


Class imageType = ImageFloat32.class;
Class imageType = GrayF32.class;
// Class imageType = GrayU8.class;


// select which algorithms to use
// select which algorithms to use
InterestPointDetector detector = FactoryInterestPoint.fastHessian(1, 2, 200, 1, 9, 4, 4);
DetectDescribePoint detDesc = FactoryDetectDescribe.
DescribeRegionPoint describe = FactoryDescribeRegionPoint.surf(true, imageType);
surfStable(new ConfigFastHessian(1, 2, 300, 1, 9, 4, 4), null, null, imageType);
GeneralAssociation<TupleDesc_F64> associate = FactoryAssociation.greedy(new ScoreAssociateEuclideanSq(), 2, -1, true);
// sift(new ConfigCompleteSift(0,5,600));
 
ScoreAssociation scorer = FactoryAssociation.defaultScore(detDesc.getDescriptionType());
AssociateDescription associate = FactoryAssociation.greedy(new ConfigAssociateGreedy(true), scorer);


// load and match images
// load and match images
ExampleAssociatePoints app = new ExampleAssociatePoints(detector,describe,associate,imageType);
ExampleAssociatePoints app = new ExampleAssociatePoints(detDesc, associate, imageType);


BufferedImage imageA = UtilImageIO.loadImage("../data/evaluation/stitch/kayak_01.jpg");
BufferedImage imageA = UtilImageIO.loadImageNotNull(UtilIO.pathExample("stitch/kayak_01.jpg"));
BufferedImage imageB = UtilImageIO.loadImage("../data/evaluation/stitch/kayak_03.jpg");
BufferedImage imageB = UtilImageIO.loadImageNotNull(UtilIO.pathExample("stitch/kayak_03.jpg"));


app.associate(imageA,imageB);
app.associate(imageA, imageB);
}
}
}
}
</syntaxhighlight>
</syntaxhighlight>

Latest revision as of 12:30, 17 January 2022

Associated feature between images using example code.
Associated feature between images using example code.

A common problem for many computer vision applications is matching features observed in two or more images. Below is an example of how this can be accomplished using interest point and their descriptions. When run, you can click on the image to select individual points or drag a region to select several.

Example Code:

Concepts:

  • Describe point features
  • Associate descriptions

Example Code

/**
 * After interest points have been detected in two images the next step is to associate the two
 * sets of images so that the relationship can be found. This is done by computing descriptors for
 * each detected feature and associating them together. In the code below abstracted interfaces are
 * used to allow different algorithms to be easily used. The cost of this abstraction is that detector/descriptor
 * specific information is thrown away, potentially slowing down or degrading performance.
 *
 * @author Peter Abeles
 */
public class ExampleAssociatePoints<T extends ImageGray<T>, TD extends TupleDesc<TD>> {

	// algorithm used to detect and describe interest points
	DetectDescribePoint<T, TD> detDesc;
	// Associated descriptions together by minimizing an error metric
	AssociateDescription<TD> associate;

	// location of interest points
	public List<Point2D_F64> pointsA;
	public List<Point2D_F64> pointsB;

	Class<T> imageType;

	public ExampleAssociatePoints( DetectDescribePoint<T, TD> detDesc,
								   AssociateDescription<TD> associate,
								   Class<T> imageType ) {
		this.detDesc = detDesc;
		this.associate = associate;
		this.imageType = imageType;
	}

	/**
	 * Detect and associate point features in the two images. Display the results.
	 */
	public void associate( BufferedImage imageA, BufferedImage imageB ) {
		T inputA = ConvertBufferedImage.convertFromSingle(imageA, null, imageType);
		T inputB = ConvertBufferedImage.convertFromSingle(imageB, null, imageType);

		// stores the location of detected interest points
		pointsA = new ArrayList<>();
		pointsB = new ArrayList<>();

		// stores the description of detected interest points
		DogArray<TD> descA = UtilFeature.createArray(detDesc, 100);
		DogArray<TD> descB = UtilFeature.createArray(detDesc, 100);

		// describe each image using interest points
		describeImage(inputA, pointsA, descA);
		describeImage(inputB, pointsB, descB);

		// Associate features between the two images
		associate.setSource(descA);
		associate.setDestination(descB);
		associate.associate();

		// display the results
		AssociationPanel panel = new AssociationPanel(20);
		panel.setAssociation(pointsA, pointsB, associate.getMatches());
		panel.setImages(imageA, imageB);

		ShowImages.showWindow(panel, "Associated Features", true);
	}

	/**
	 * Detects features inside the two images and computes descriptions at those points.
	 */
	private void describeImage( T input, List<Point2D_F64> points, DogArray<TD> descs ) {
		detDesc.detect(input);

		for (int i = 0; i < detDesc.getNumberOfFeatures(); i++) {
			points.add(detDesc.getLocation(i).copy());
			descs.grow().setTo(detDesc.getDescription(i));
		}
	}

	public static void main( String[] args ) {

		Class imageType = GrayF32.class;
//		Class imageType = GrayU8.class;

		// select which algorithms to use
		DetectDescribePoint detDesc = FactoryDetectDescribe.
				surfStable(new ConfigFastHessian(1, 2, 300, 1, 9, 4, 4), null, null, imageType);
//				sift(new ConfigCompleteSift(0,5,600));

		ScoreAssociation scorer = FactoryAssociation.defaultScore(detDesc.getDescriptionType());
		AssociateDescription associate = FactoryAssociation.greedy(new ConfigAssociateGreedy(true), scorer);

		// load and match images
		ExampleAssociatePoints app = new ExampleAssociatePoints(detDesc, associate, imageType);

		BufferedImage imageA = UtilImageIO.loadImageNotNull(UtilIO.pathExample("stitch/kayak_01.jpg"));
		BufferedImage imageB = UtilImageIO.loadImageNotNull(UtilIO.pathExample("stitch/kayak_03.jpg"));

		app.associate(imageA, imageB);
	}
}