Example Image Stitching

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Image Stitching Example

Image stitching refers to combining two or more overlapping images together into a single large image. The goal is to find transforms which minimize the error in overlapping regions and provide a smooth transition between images. There are many different ways in which image stitching can be done, what is discussed here are point based methods. To understand this tutorial a basic understanding of point features and model fitting is required.

Example File: ExampleImageStitching.java

Concepts:

  • Interest point detection
  • Region descriptions
  • Feature association
  • Robust model fitting
  • Homography

Relevant Applets:

Algorithm Introduction

Described at a high level this image stitching algorithm can be summarized as follows:

  1. Detect feature locations
  2. Compute feature descriptors
  3. Associate features together
  4. Robust fitting to find transform
  5. Render combined image

The core algorithm has been coded up using abstracted code which allows different models and algorithms to be changed easily. Output examples are shown at the top of this page.

Abstracted Code

The code algorithm summarized in the previous section is now shown in code. Java generics are used to abstract away the input image type as well as the type of models being used to describe the image motion. Checks are done to make sure compatible detector and describes have been provided.

	/**
	 * Using abstracted code, find a transform which minimizes the difference between corresponding features
	 * in both images.  This code is completely model independent and is the core algorithms.
	 */
	public static<T extends ImageSingleBand, FD extends TupleDesc> Homography2D_F64
	computeTransform( T imageA , T imageB ,
					  InterestPointDetector<T> detector ,
					  DescribeRegionPoint<T, FD> describe ,
					  GeneralAssociation<FD> associate ,
					  ModelMatcher<Homography2D_F64,AssociatedPair> modelMatcher )
	{
		// see if the detector has everything that the describer needs
		if( describe.requiresOrientation() && !detector.hasOrientation() )
			throw new IllegalArgumentException("Requires orientation be provided.");
		if( describe.requiresScale() && !detector.hasScale() )
			throw new IllegalArgumentException("Requires scale be provided.");

		// get the length of the description
		List<Point2D_F64> pointsA = new ArrayList<Point2D_F64>();
		FastQueue<FD> descA = new TupleDescQueue<FD>(describe,true);
		List<Point2D_F64> pointsB = new ArrayList<Point2D_F64>();
		FastQueue<FD> descB = new TupleDescQueue<FD>(describe,true);

		// extract feature locations and descriptions from each image
		describeImage(imageA, detector, describe, pointsA, descA);
		describeImage(imageB, detector, describe, pointsB, descB);

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

		// create a list of AssociatedPairs that tell the model matcher how a feature moved
		FastQueue<AssociatedIndex> matches = associate.getMatches();
		List<AssociatedPair> pairs = new ArrayList<AssociatedPair>();

		for( int i = 0; i < matches.size(); i++ ) {
			AssociatedIndex match = matches.get(i);

			Point2D_F64 a = pointsA.get(match.src);
			Point2D_F64 b = pointsB.get(match.dst);

			pairs.add( new AssociatedPair(a,b,false));
		}

		// find the best fit model to describe the change between these images
		if( !modelMatcher.process(pairs) )
			throw new RuntimeException("Model Matcher failed!");

		// return the found image transform
		return modelMatcher.getModel();
	}


Each image is described as a set of detected interest points and feature descriptions for those interest points. In this function points are detected and then descriptions extracted.

	/**
	 * Detects features inside the two images and computes descriptions at those points.
	 */
	private static <T extends ImageSingleBand, FD extends TupleDesc>
	void describeImage(T image,
					   InterestPointDetector<T> detector,
					   DescribeRegionPoint<T,FD> describe,
					   List<Point2D_F64> points,
					   FastQueue<FD> listDescs) {
		detector.detect(image);
		describe.setImage(image);

		listDescs.reset();
		for( int i = 0; i < detector.getNumberOfFeatures(); 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.isInBounds(p.x,p.y,yaw,scale) ) {
				describe.process(p.x, p.y, yaw, scale, listDescs.pop());
				points.add(p.copy());
			}
		}
	}

Declaration of Specific Algorithms

In the previous section abstracted code was used to detect and associate features. In this function the specific algorithms which are passed in are defined. This is also where one could change the type of descriptor used to see how that affects performance.

A homography is used to describe the transform between the images. Homographies assume that all features lie on a plane. While this might sound overly restrictive it is a good model when dealing with objects that are far away or when rotating. While a homography should be a good fit for these images, this model does not take in account lens distortion and other physical affects which introduces some artifacts.


	/**
	 * Given two input images create and display an image where the two have been overlayed on top of each other.
	 */
	public static <T extends ImageSingleBand>
	void stitch( BufferedImage imageA , BufferedImage imageB , Class<T> imageType )
	{
		T inputA = ConvertBufferedImage.convertFromSingle(imageA, null, imageType);
		T inputB = ConvertBufferedImage.convertFromSingle(imageB, null, imageType);

		// Detect using the standard SURF feature descriptor and describer
		InterestPointDetector<T> detector = FactoryInterestPoint.fastHessian(1, 2, 400, 1, 9, 4, 4);
		DescribeRegionPoint<T,SurfFeature> describe = FactoryDescribeRegionPoint.surf(true,imageType);
		ScoreAssociation<SurfFeature> scorer = FactoryAssociation.scoreEuclidean(SurfFeature.class,true);
		GeneralAssociation<SurfFeature> associate = FactoryAssociation.greedy(scorer,2,-1,true);

		// fit the images using a homography.  This works well for rotations and distant objects.
		GenerateHomographyLinear modelFitter = new GenerateHomographyLinear(true);
		DistanceHomographySq distance = new DistanceHomographySq();
		int minSamples = modelFitter.getMinimumPoints();
		ModelMatcher<Homography2D_F64,AssociatedPair> modelMatcher =
				new SimpleInlierRansac<Homography2D_F64,AssociatedPair>(123,modelFitter,distance,60,minSamples,30,1000,9);

		Homography2D_F64 H = computeTransform(inputA, inputB, detector, describe, associate, modelMatcher);

		// draw the results
		HomographyStitchPanel panel = new HomographyStitchPanel(0.5,inputA.width,inputA.height);
		panel.configure(imageA,imageB,H);
		ShowImages.showWindow(panel,"Stitched Images");
	}