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if (typeof module !== 'undefined' && module.exports) {
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var cv = require('./opencv.js');
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cv.FS_createLazyFile('/', 'haarcascade_frontalface_default.xml',
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'haarcascade_frontalface_default.xml', true, false);
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}
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QUnit.module('Object Detection', {});
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QUnit.test('Cascade classification', function(assert) {
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{
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let rectList = new cv.RectVector();
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let weights = new cv.IntVector();
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let groupThreshold = 1;
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const eps = 0.2;
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let rect1 = new cv.Rect(1, 2, 3, 4);
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let rect2 = new cv.Rect(1, 4, 2, 3);
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rectList.push_back(rect1);
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rectList.push_back(rect2);
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cv.groupRectangles(rectList, weights, groupThreshold, eps);
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rectList.delete();
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weights.delete();
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}
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{
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let classifier = new cv.CascadeClassifier();
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const modelPath = '/haarcascade_frontalface_default.xml';
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assert.equal(classifier.empty(), true);
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classifier.load(modelPath);
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assert.equal(classifier.empty(), false);
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let image = cv.Mat.eye({height: 10, width: 10}, cv.CV_8UC3);
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let objects = new cv.RectVector();
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let numDetections = new cv.IntVector();
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const scaleFactor = 1.1;
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const minNeighbors = 3;
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const flags = 0;
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const minSize = {height: 0, width: 0};
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const maxSize = {height: 10, width: 10};
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classifier.detectMultiScale2(image, objects, numDetections, scaleFactor,
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minNeighbors, flags, minSize, maxSize);
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classifier.detectMultiScale2(image, objects, numDetections, scaleFactor,
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minNeighbors, flags, minSize);
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classifier.detectMultiScale2(image, objects, numDetections, scaleFactor,
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minNeighbors, flags);
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classifier.detectMultiScale2(image, objects, numDetections, scaleFactor,
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minNeighbors);
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classifier.detectMultiScale2(image, objects, numDetections, scaleFactor);
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classifier.delete();
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objects.delete();
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numDetections.delete();
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}
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{
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let hog = new cv.HOGDescriptor();
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let mat = new cv.Mat({height: 10, width: 10}, cv.CV_8UC1);
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let descriptors = new cv.FloatVector();
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let locations = new cv.PointVector();
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assert.equal(hog.winSize.height, 128);
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assert.equal(hog.winSize.width, 64);
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assert.equal(hog.nbins, 9);
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assert.equal(hog.derivAperture, 1);
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assert.equal(hog.winSigma, -1);
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assert.equal(hog.histogramNormType, 0);
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assert.equal(hog.nlevels, 64);
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hog.nlevels = 32;
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assert.equal(hog.nlevels, 32);
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hog.delete();
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mat.delete();
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descriptors.delete();
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locations.delete();
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|
}
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|
});
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QUnit.test('QR code detect and decode', function (assert) {
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|
{
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|
const detector = new cv.QRCodeDetector();
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|
let mat = cv.Mat.ones(800, 600, cv.CV_8U);
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|
assert.ok(mat);
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|
|
let points = new cv.Mat();
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|
let qrCodeFound = detector.detect(mat, points);
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assert.equal(points.rows, 0)
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assert.equal(points.cols, 0)
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assert.equal(qrCodeFound, false);
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|
qrCodeFound = detector.detectMulti(mat, points);
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|
|
assert.equal(points.rows, 0)
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|
|
assert.equal(points.cols, 0)
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|
|
assert.equal(qrCodeFound, false);
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|
|
let decodeTestPoints = cv.matFromArray(1, 4, cv.CV_32FC2, [10, 20, 30, 40, 60, 80, 90, 100]);
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|
|
let qrCodeContent = detector.decode(mat, decodeTestPoints);
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|
|
assert.equal(typeof qrCodeContent, 'string');
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|
|
assert.equal(qrCodeContent, '');
|
|
|
|
|
|
|
|
|
qrCodeContent = detector.detectAndDecode(mat);
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|
|
assert.equal(typeof qrCodeContent, 'string');
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|
|
assert.equal(qrCodeContent, '');
|
|
|
|
|
|
|
|
|
qrCodeContent = detector.decodeCurved(mat, decodeTestPoints);
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|
|
assert.equal(typeof qrCodeContent, 'string');
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|
|
assert.equal(qrCodeContent, '');
|
|
|
|
|
|
decodeTestPoints.delete();
|
|
|
points.delete();
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|
|
mat.delete();
|
|
|
|
|
|
}
|
|
|
});
|
|
|
QUnit.test('Aruco-based QR code detect', function (assert) {
|
|
|
{
|
|
|
let qrcode_params = new cv.QRCodeDetectorAruco_Params();
|
|
|
let detector = new cv.QRCodeDetectorAruco();
|
|
|
let mat = cv.Mat.ones(800, 600, cv.CV_8U);
|
|
|
assert.ok(mat);
|
|
|
|
|
|
detector.setDetectorParameters(qrcode_params);
|
|
|
|
|
|
let points = new cv.Mat();
|
|
|
let qrCodeFound = detector.detect(mat, points);
|
|
|
assert.equal(points.rows, 0)
|
|
|
assert.equal(points.cols, 0)
|
|
|
assert.equal(qrCodeFound, false);
|
|
|
|
|
|
qrcode_params.delete();
|
|
|
detector.delete();
|
|
|
points.delete();
|
|
|
mat.delete();
|
|
|
}
|
|
|
});
|
|
|
QUnit.test('Bar code detect', function (assert) {
|
|
|
{
|
|
|
let detector = new cv.barcode_BarcodeDetector();
|
|
|
let mat = cv.Mat.ones(800, 600, cv.CV_8U);
|
|
|
assert.ok(mat);
|
|
|
|
|
|
let points = new cv.Mat();
|
|
|
let codeFound = detector.detect(mat, points);
|
|
|
assert.equal(points.rows, 0)
|
|
|
assert.equal(points.cols, 0)
|
|
|
assert.equal(codeFound, false);
|
|
|
|
|
|
codeContent = detector.detectAndDecode(mat);
|
|
|
assert.equal(typeof codeContent, 'string');
|
|
|
assert.equal(codeContent, '');
|
|
|
|
|
|
detector.delete();
|
|
|
points.delete();
|
|
|
mat.delete();
|
|
|
}
|
|
|
});
|
|
|
QUnit.test('Aruco detector', function (assert) {
|
|
|
{
|
|
|
let dictionary = cv.getPredefinedDictionary(cv.DICT_4X4_50);
|
|
|
let aruco_image = new cv.Mat();
|
|
|
let detectorParameters = new cv.aruco_DetectorParameters();
|
|
|
let refineParameters = new cv.aruco_RefineParameters(10, 3, true);
|
|
|
let detector = new cv.aruco_ArucoDetector(dictionary, detectorParameters,refineParameters);
|
|
|
let corners = new cv.MatVector();
|
|
|
let ids = new cv.Mat();
|
|
|
|
|
|
dictionary.generateImageMarker(10, 128, aruco_image);
|
|
|
assert.ok(!aruco_image.empty());
|
|
|
|
|
|
detector.detectMarkers(aruco_image, corners, ids);
|
|
|
|
|
|
dictionary.delete();
|
|
|
aruco_image.delete();
|
|
|
detectorParameters.delete();
|
|
|
refineParameters.delete();
|
|
|
detector.delete();
|
|
|
corners.delete();
|
|
|
ids.delete();
|
|
|
}
|
|
|
});
|
|
|
QUnit.test('Charuco detector', function (assert) {
|
|
|
{
|
|
|
let dictionary = new cv.getPredefinedDictionary(cv.DICT_4X4_50);
|
|
|
let boardIds = new cv.Mat();
|
|
|
let board = new cv.aruco_CharucoBoard(new cv.Size(3, 5), 64, 32, dictionary, boardIds);
|
|
|
let charucoParameters = new cv.aruco_CharucoParameters();
|
|
|
let detectorParameters = new cv.aruco_DetectorParameters();
|
|
|
let refineParameters = new cv.aruco_RefineParameters(10, 3, true);
|
|
|
let detector = new cv.aruco_CharucoDetector(board, charucoParameters, detectorParameters, refineParameters);
|
|
|
let board_image = new cv.Mat();
|
|
|
let corners = new cv.Mat();
|
|
|
let ids = new cv.Mat();
|
|
|
|
|
|
board.generateImage(new cv.Size(300, 500), board_image);
|
|
|
assert.ok(!board_image.empty());
|
|
|
|
|
|
detector.detectBoard(board_image, corners, ids);
|
|
|
assert.ok(!corners.empty());
|
|
|
assert.ok(!ids.empty());
|
|
|
|
|
|
dictionary.delete();
|
|
|
boardIds.delete();
|
|
|
board.delete();
|
|
|
board_image.delete();
|
|
|
charucoParameters.delete();
|
|
|
detectorParameters.delete();
|
|
|
refineParameters.delete();
|
|
|
detector.delete();
|
|
|
corners.delete();
|
|
|
ids.delete();
|
|
|
}
|
|
|
});
|
|
|
|