opencv/modules/features2d/misc/java/test/SIMPLEBLOBFeatureDetectorTest.java

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2012-10-17 15:12:04 +08:00
package org.opencv.test.features2d;
import java.util.Arrays;
import org.opencv.core.CvType;
import org.opencv.core.Mat;
import org.opencv.core.MatOfKeyPoint;
import org.opencv.core.Point;
import org.opencv.core.Scalar;
import org.opencv.core.KeyPoint;
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import org.opencv.test.OpenCVTestCase;
import org.opencv.test.OpenCVTestRunner;
import org.opencv.imgproc.Imgproc;
import org.opencv.features2d.SimpleBlobDetector;
import org.opencv.features2d.SimpleBlobDetector_Params;
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public class SIMPLEBLOBFeatureDetectorTest extends OpenCVTestCase {
SimpleBlobDetector detector;
int matSize;
KeyPoint[] truth;
private Mat getMaskImg() {
Mat mask = new Mat(matSize, matSize, CvType.CV_8U, new Scalar(255));
Mat right = mask.submat(0, matSize, matSize / 2, matSize);
right.setTo(new Scalar(0));
return mask;
}
private Mat getTestImg() {
int center = matSize / 2;
int offset = 40;
Mat img = new Mat(matSize, matSize, CvType.CV_8U, new Scalar(255));
Imgproc.circle(img, new Point(center - offset, center), 24, new Scalar(0), -1);
Imgproc.circle(img, new Point(center + offset, center), 20, new Scalar(50), -1);
Imgproc.circle(img, new Point(center, center - offset), 18, new Scalar(100), -1);
Imgproc.circle(img, new Point(center, center + offset), 14, new Scalar(150), -1);
Imgproc.circle(img, new Point(center, center), 10, new Scalar(200), -1);
return img;
}
@Override
protected void setUp() throws Exception {
super.setUp();
detector = SimpleBlobDetector.create();
matSize = 200;
truth = new KeyPoint[] {
new KeyPoint(140, 100, 41.036568f, -1, 0, 0, -1),
new KeyPoint(60, 100, 48.538486f, -1, 0, 0, -1),
new KeyPoint(100, 60, 36.769554f, -1, 0, 0, -1),
new KeyPoint(100, 140, 28.635643f, -1, 0, 0, -1),
new KeyPoint(100, 100, 20.880613f, -1, 0, 0, -1)
};
}
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public void testCreate() {
assertNotNull(detector);
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}
public void testDetectListOfMatListOfListOfKeyPoint() {
fail("Not yet implemented");
}
public void testDetectListOfMatListOfListOfKeyPointListOfMat() {
fail("Not yet implemented");
}
public void testDetectMatListOfKeyPoint() {
Mat img = getTestImg();
MatOfKeyPoint keypoints = new MatOfKeyPoint();
detector.detect(img, keypoints);
assertListKeyPointEquals(Arrays.asList(truth), keypoints.toList(), EPS);
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}
public void testDetectMatListOfKeyPointMat() {
Mat img = getTestImg();
Mat mask = getMaskImg();
MatOfKeyPoint keypoints = new MatOfKeyPoint();
detector.detect(img, keypoints, mask);
assertListKeyPointEquals(Arrays.asList(truth[1]), keypoints.toList(), EPS);
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}
public void testEmpty() {
// assertFalse(detector.empty());
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fail("Not yet implemented");
}
public void testReadYml() {
Mat img = getTestImg();
MatOfKeyPoint keypoints1 = new MatOfKeyPoint();
detector.detect(img, keypoints1);
String filename = OpenCVTestRunner.getTempFileName("yml");
writeFile(filename, "%YAML:1.0\nthresholdStep: 10.0\nminThreshold: 50\nmaxThreshold: 220\nminRepeatability: 2\nminDistBetweenBlobs: 10.\nfilterByColor: 1\nblobColor: 0\nfilterByArea: 1\nminArea: 800\nmaxArea: 6000\nfilterByCircularity: 0\nminCircularity: 0.7\nmaxCircularity: 10.\nfilterByInertia: 1\nminInertiaRatio: 0.2\nmaxInertiaRatio: 11.\nfilterByConvexity: true\nminConvexity: 0.9\nmaxConvexity: 12.\n");
detector.read(filename);
SimpleBlobDetector_Params params = detector.getParams();
assertEquals(10.0f, params.get_thresholdStep());
assertEquals(50f, params.get_minThreshold());
assertEquals(220f, params.get_maxThreshold());
assertEquals(2, params.get_minRepeatability());
assertEquals(10.0f, params.get_minDistBetweenBlobs());
assertEquals(true, params.get_filterByColor());
// FIXME: blobColor field has uchar type in C++ and cannot be automatically wrapped to Java as it does not support unsigned types
//assertEquals(0, params.get_blobColor());
assertEquals(true, params.get_filterByArea());
assertEquals(800f, params.get_minArea());
assertEquals(6000f, params.get_maxArea());
assertEquals(false, params.get_filterByCircularity());
assertEquals(0.7f, params.get_minCircularity());
assertEquals(10.0f, params.get_maxCircularity());
assertEquals(true, params.get_filterByInertia());
assertEquals(0.2f, params.get_minInertiaRatio());
assertEquals(11.0f, params.get_maxInertiaRatio());
assertEquals(true, params.get_filterByConvexity());
assertEquals(0.9f, params.get_minConvexity());
assertEquals(12.0f, params.get_maxConvexity());
MatOfKeyPoint keypoints2 = new MatOfKeyPoint();
detector.detect(img, keypoints2);
assertTrue(keypoints2.total() <= keypoints1.total());
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}
public void testWrite() {
String filename = OpenCVTestRunner.getTempFileName("xml");
detector.write(filename);
String truth = "<?xml version=\"1.0\"?>\n<opencv_storage>\n<format>3</format>\n<thresholdStep>10.</thresholdStep>\n<minThreshold>50.</minThreshold>\n<maxThreshold>220.</maxThreshold>\n<minRepeatability>2</minRepeatability>\n<minDistBetweenBlobs>10.</minDistBetweenBlobs>\n<filterByColor>1</filterByColor>\n<blobColor>0</blobColor>\n<filterByArea>1</filterByArea>\n<minArea>25.</minArea>\n<maxArea>5000.</maxArea>\n<filterByCircularity>0</filterByCircularity>\n<minCircularity>0.80000001192092896</minCircularity>\n<maxCircularity>3.4028234663852886e+38</maxCircularity>\n<filterByInertia>1</filterByInertia>\n<minInertiaRatio>0.10000000149011612</minInertiaRatio>\n<maxInertiaRatio>3.4028234663852886e+38</maxInertiaRatio>\n<filterByConvexity>1</filterByConvexity>\n<minConvexity>0.94999998807907104</minConvexity>\n<maxConvexity>3.4028234663852886e+38</maxConvexity>\n<collectContours>0</collectContours>\n</opencv_storage>\n";
assertEquals(truth, readFile(filename));
}
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}