video-libs
/
opencv
/sources
/modules
/features2d
/misc
/java
/test
/FlannBasedDescriptorMatcherTest.java
| package org.opencv.test.features2d; | |
| import java.util.Arrays; | |
| import java.util.List; | |
| import org.opencv.core.CvException; | |
| import org.opencv.core.CvType; | |
| import org.opencv.core.Mat; | |
| import org.opencv.core.MatOfDMatch; | |
| import org.opencv.core.MatOfKeyPoint; | |
| import org.opencv.core.Point; | |
| import org.opencv.core.Scalar; | |
| import org.opencv.core.DMatch; | |
| import org.opencv.features2d.DescriptorMatcher; | |
| import org.opencv.features2d.FlannBasedMatcher; | |
| import org.opencv.core.KeyPoint; | |
| import org.opencv.test.OpenCVTestCase; | |
| import org.opencv.test.OpenCVTestRunner; | |
| import org.opencv.imgproc.Imgproc; | |
| import org.opencv.features2d.Feature2D; | |
| public class FlannBasedDescriptorMatcherTest extends OpenCVTestCase { | |
| static final String xmlParamsDefault = "<?xml version=\"1.0\"?>\n" | |
| + "<opencv_storage>\n" | |
| + "<format>3</format>\n" | |
| + "<indexParams>\n" | |
| + " <_>\n" | |
| + " <name>algorithm</name>\n" | |
| + " <type>9</type>\n" // FLANN_INDEX_TYPE_ALGORITHM | |
| + " <value>1</value></_>\n" | |
| + " <_>\n" | |
| + " <name>trees</name>\n" | |
| + " <type>4</type>\n" | |
| + " <value>4</value></_></indexParams>\n" | |
| + "<searchParams>\n" | |
| + " <_>\n" | |
| + " <name>checks</name>\n" | |
| + " <type>4</type>\n" | |
| + " <value>32</value></_>\n" | |
| + " <_>\n" | |
| + " <name>eps</name>\n" | |
| + " <type>5</type>\n" | |
| + " <value>0.</value></_>\n" | |
| + " <_>\n" | |
| + " <name>explore_all_trees</name>\n" | |
| + " <type>8</type>\n" | |
| + " <value>0</value></_>\n" | |
| + " <_>\n" | |
| + " <name>sorted</name>\n" | |
| + " <type>8</type>\n" // FLANN_INDEX_TYPE_BOOL | |
| + " <value>1</value></_></searchParams>\n" | |
| + "</opencv_storage>\n"; | |
| static final String ymlParamsDefault = "%YAML:1.0\n---\n" | |
| + "format: 3\n" | |
| + "indexParams:\n" | |
| + " -\n" | |
| + " name: algorithm\n" | |
| + " type: 9\n" // FLANN_INDEX_TYPE_ALGORITHM | |
| + " value: 1\n" | |
| + " -\n" | |
| + " name: trees\n" | |
| + " type: 4\n" | |
| + " value: 4\n" | |
| + "searchParams:\n" | |
| + " -\n" | |
| + " name: checks\n" | |
| + " type: 4\n" | |
| + " value: 32\n" | |
| + " -\n" | |
| + " name: eps\n" | |
| + " type: 5\n" | |
| + " value: 0.\n" | |
| + " -\n" | |
| + " name: explore_all_trees\n" | |
| + " type: 8\n" | |
| + " value: 0\n" | |
| + " -\n" | |
| + " name: sorted\n" | |
| + " type: 8\n" // FLANN_INDEX_TYPE_BOOL | |
| + " value: 1\n"; | |
| static final String ymlParamsModified = "%YAML:1.0\n---\n" | |
| + "format: 3\n" | |
| + "indexParams:\n" | |
| + " -\n" | |
| + " name: algorithm\n" | |
| + " type: 9\n" // FLANN_INDEX_TYPE_ALGORITHM | |
| + " value: 6\n"// this line is changed! | |
| + " -\n" | |
| + " name: trees\n" | |
| + " type: 4\n" | |
| + " value: 4\n" | |
| + "searchParams:\n" | |
| + " -\n" | |
| + " name: checks\n" | |
| + " type: 4\n" | |
| + " value: 32\n" | |
| + " -\n" | |
| + " name: eps\n" | |
| + " type: 5\n" | |
| + " value: 4.\n"// this line is changed! | |
| + " -\n" | |
| + " name: explore_all_trees\n" | |
| + " type: 8\n" | |
| + " value: 1\n"// this line is changed! | |
| + " -\n" | |
| + " name: sorted\n" | |
| + " type: 8\n" // FLANN_INDEX_TYPE_BOOL | |
| + " value: 1\n"; | |
| DescriptorMatcher matcher; | |
| int matSize; | |
| DMatch[] truth; | |
| private Mat getMaskImg() { | |
| return new Mat(5, 2, CvType.CV_8U, new Scalar(0)) { | |
| { | |
| put(0, 0, 1, 1, 1, 1); | |
| } | |
| }; | |
| } | |
| private Mat getQueryDescriptors() { | |
| Mat img = getQueryImg(); | |
| MatOfKeyPoint keypoints = new MatOfKeyPoint(); | |
| Mat descriptors = new Mat(); | |
| Feature2D detector = createClassInstance(XFEATURES2D+"SURF", DEFAULT_FACTORY, null, null); | |
| Feature2D extractor = createClassInstance(XFEATURES2D+"SURF", DEFAULT_FACTORY, null, null); | |
| setProperty(detector, "hessianThreshold", "double", 8000); | |
| setProperty(detector, "nOctaves", "int", 3); | |
| setProperty(detector, "upright", "boolean", false); | |
| detector.detect(img, keypoints); | |
| extractor.compute(img, keypoints, descriptors); | |
| return descriptors; | |
| } | |
| private Mat getQueryImg() { | |
| Mat cross = new Mat(matSize, matSize, CvType.CV_8U, new Scalar(255)); | |
| Imgproc.line(cross, new Point(30, matSize / 2), new Point(matSize - 31, matSize / 2), new Scalar(100), 3); | |
| Imgproc.line(cross, new Point(matSize / 2, 30), new Point(matSize / 2, matSize - 31), new Scalar(100), 3); | |
| return cross; | |
| } | |
| private Mat getTrainDescriptors() { | |
| Mat img = getTrainImg(); | |
| MatOfKeyPoint keypoints = new MatOfKeyPoint(new KeyPoint(50, 50, 16, 0, 20000, 1, -1), new KeyPoint(42, 42, 16, 160, 10000, 1, -1)); | |
| Mat descriptors = new Mat(); | |
| Feature2D extractor = createClassInstance(XFEATURES2D+"SURF", DEFAULT_FACTORY, null, null); | |
| extractor.compute(img, keypoints, descriptors); | |
| return descriptors; | |
| } | |
| private Mat getTrainImg() { | |
| Mat cross = new Mat(matSize, matSize, CvType.CV_8U, new Scalar(255)); | |
| Imgproc.line(cross, new Point(20, matSize / 2), new Point(matSize - 21, matSize / 2), new Scalar(100), 2); | |
| Imgproc.line(cross, new Point(matSize / 2, 20), new Point(matSize / 2, matSize - 21), new Scalar(100), 2); | |
| return cross; | |
| } | |
| protected void setUp() throws Exception { | |
| super.setUp(); | |
| matcher = DescriptorMatcher.create(DescriptorMatcher.FLANNBASED); | |
| matSize = 100; | |
| truth = new DMatch[] { | |
| new DMatch(0, 0, 0, 0.6159003f), | |
| new DMatch(1, 1, 0, 0.9177120f), | |
| new DMatch(2, 1, 0, 0.3112163f), | |
| new DMatch(3, 1, 0, 0.2925075f), | |
| new DMatch(4, 1, 0, 0.26520672f) | |
| }; | |
| } | |
| // https://github.com/opencv/opencv/issues/11268 | |
| public void testConstructor() | |
| { | |
| FlannBasedMatcher self_created_matcher = new FlannBasedMatcher(); | |
| Mat train = new Mat(1, 1, CvType.CV_8U, new Scalar(123)); | |
| self_created_matcher.add(Arrays.asList(train)); | |
| assertTrue(!self_created_matcher.empty()); | |
| } | |
| public void testAdd() { | |
| matcher.add(Arrays.asList(new Mat())); | |
| assertFalse(matcher.empty()); | |
| } | |
| public void testClear() { | |
| matcher.add(Arrays.asList(new Mat())); | |
| matcher.clear(); | |
| assertTrue(matcher.empty()); | |
| } | |
| public void testClone() { | |
| Mat train = new Mat(1, 1, CvType.CV_8U, new Scalar(123)); | |
| matcher.add(Arrays.asList(train)); | |
| try { | |
| matcher.clone(); | |
| fail("Expected CvException (CV_StsNotImplemented)"); | |
| } catch (CvException cverr) { | |
| // expected | |
| } | |
| } | |
| public void testCloneBoolean() { | |
| matcher.add(Arrays.asList(new Mat())); | |
| DescriptorMatcher cloned = matcher.clone(true); | |
| assertNotNull(cloned); | |
| assertTrue(cloned.empty()); | |
| } | |
| public void testCreate() { | |
| assertNotNull(matcher); | |
| } | |
| public void testEmpty() { | |
| assertTrue(matcher.empty()); | |
| } | |
| public void testGetTrainDescriptors() { | |
| Mat train = new Mat(1, 1, CvType.CV_8U, new Scalar(123)); | |
| Mat truth = train.clone(); | |
| matcher.add(Arrays.asList(train)); | |
| List<Mat> descriptors = matcher.getTrainDescriptors(); | |
| assertEquals(1, descriptors.size()); | |
| assertMatEqual(truth, descriptors.get(0)); | |
| } | |
| public void testIsMaskSupported() { | |
| assertFalse(matcher.isMaskSupported()); | |
| } | |
| public void testKnnMatchMatListOfListOfDMatchInt() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testKnnMatchMatListOfListOfDMatchIntListOfMat() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testKnnMatchMatListOfListOfDMatchIntListOfMatBoolean() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testKnnMatchMatMatListOfListOfDMatchInt() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testKnnMatchMatMatListOfListOfDMatchIntMat() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testKnnMatchMatMatListOfListOfDMatchIntMatBoolean() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testMatchMatListOfDMatch() { | |
| Mat train = getTrainDescriptors(); | |
| Mat query = getQueryDescriptors(); | |
| MatOfDMatch matches = new MatOfDMatch(); | |
| matcher.add(Arrays.asList(train)); | |
| matcher.train(); | |
| matcher.match(query, matches); | |
| assertArrayDMatchEquals(truth, matches.toArray(), EPS); | |
| } | |
| public void testMatchMatListOfDMatchListOfMat() { | |
| Mat train = getTrainDescriptors(); | |
| Mat query = getQueryDescriptors(); | |
| Mat mask = getMaskImg(); | |
| MatOfDMatch matches = new MatOfDMatch(); | |
| matcher.add(Arrays.asList(train)); | |
| matcher.train(); | |
| matcher.match(query, matches, Arrays.asList(mask)); | |
| assertArrayDMatchEquals(truth, matches.toArray(), EPS); | |
| } | |
| public void testMatchMatMatListOfDMatch() { | |
| Mat train = getTrainDescriptors(); | |
| Mat query = getQueryDescriptors(); | |
| MatOfDMatch matches = new MatOfDMatch(); | |
| matcher.match(query, train, matches); | |
| assertArrayDMatchEquals(truth, matches.toArray(), EPS); | |
| // OpenCVTestRunner.Log(matches.toString()); | |
| // OpenCVTestRunner.Log(matches); | |
| } | |
| public void testMatchMatMatListOfDMatchMat() { | |
| Mat train = getTrainDescriptors(); | |
| Mat query = getQueryDescriptors(); | |
| Mat mask = getMaskImg(); | |
| MatOfDMatch matches = new MatOfDMatch(); | |
| matcher.match(query, train, matches, mask); | |
| assertListDMatchEquals(Arrays.asList(truth), matches.toList(), EPS); | |
| } | |
| public void testRadiusMatchMatListOfListOfDMatchFloat() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testRadiusMatchMatListOfListOfDMatchFloatListOfMat() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testRadiusMatchMatListOfListOfDMatchFloatListOfMatBoolean() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testRadiusMatchMatMatListOfListOfDMatchFloat() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testRadiusMatchMatMatListOfListOfDMatchFloatMat() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testRadiusMatchMatMatListOfListOfDMatchFloatMatBoolean() { | |
| fail("Not yet implemented"); | |
| } | |
| public void testRead() { | |
| String filenameR = OpenCVTestRunner.getTempFileName("yml"); | |
| String filenameW = OpenCVTestRunner.getTempFileName("yml"); | |
| writeFile(filenameR, ymlParamsModified); | |
| matcher.read(filenameR); | |
| matcher.write(filenameW); | |
| assertEquals(ymlParamsModified, readFile(filenameW)); | |
| } | |
| public void testTrain() { | |
| Mat train = getTrainDescriptors(); | |
| matcher.add(Arrays.asList(train)); | |
| matcher.train(); | |
| } | |
| public void testTrainNoData() { | |
| try { | |
| matcher.train(); | |
| fail("Expected CvException - FlannBasedMatcher::train should fail on empty train set"); | |
| } catch (CvException cverr) { | |
| // expected | |
| } | |
| } | |
| public void testWrite() { | |
| String filename = OpenCVTestRunner.getTempFileName("xml"); | |
| matcher.write(filename); | |
| assertEquals(xmlParamsDefault, readFile(filename)); | |
| } | |
| public void testWriteYml() { | |
| String filename = OpenCVTestRunner.getTempFileName("yml"); | |
| matcher.write(filename); | |
| assertEquals(ymlParamsDefault, readFile(filename)); | |
| } | |
| } | |