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22d64ae08f
[GSoC] High Level API and Samples for Scene Text Detection and Recognition * APIs and samples for scene text detection and recognition * update APIs and tutorial for Text Detection and Recognition * API updates: (1) put decodeType into struct Voc (2) optimize the post-processing of DB * sample update: (1) add transformation into scene_text_spotting.cpp (2) modify text_detection.cpp with API update * update tutorial * simplify text recognition API update tutorial * update impl usage in recognize() and detect() * dnn: refactoring public API of TextRecognitionModel/TextDetectionModel * update provided models update opencv.bib * dnn: adjust text rectangle angle * remove points ordering operation in model.cpp * update gts of DB test in test_model.cpp * dnn: ensure to keep text rectangle angle - avoid 90/180 degree turns * dnn(text): use quadrangle result in TextDetectionModel API * dnn: update Text Detection API (1) keep points' order consistent with (bl, tl, tr, br) in unclip (2) update contourScore with boundingRect
170 lines
6.1 KiB
C++
170 lines
6.1 KiB
C++
#include <iostream>
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#include <fstream>
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#include <opencv2/imgproc.hpp>
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#include <opencv2/highgui.hpp>
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#include <opencv2/dnn/dnn.hpp>
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using namespace cv;
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using namespace cv::dnn;
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std::string keys =
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"{ help h | | Print help message. }"
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"{ inputImage i | | Path to an input image. Skip this argument to capture frames from a camera. }"
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"{ detModelPath dmp | | Path to a binary .onnx model for detection. "
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"Download links are provided in doc/tutorials/dnn/dnn_text_spotting/dnn_text_spotting.markdown}"
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"{ recModelPath rmp | | Path to a binary .onnx model for recognition. "
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"Download links are provided in doc/tutorials/dnn/dnn_text_spotting/dnn_text_spotting.markdown}"
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"{ inputHeight ih |736| image height of the model input. It should be multiple by 32.}"
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"{ inputWidth iw |736| image width of the model input. It should be multiple by 32.}"
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"{ RGBInput rgb |0| 0: imread with flags=IMREAD_GRAYSCALE; 1: imread with flags=IMREAD_COLOR. }"
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"{ binaryThreshold bt |0.3| Confidence threshold of the binary map. }"
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"{ polygonThreshold pt |0.5| Confidence threshold of polygons. }"
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"{ maxCandidate max |200| Max candidates of polygons. }"
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"{ unclipRatio ratio |2.0| unclip ratio. }"
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"{ vocabularyPath vp | alphabet_36.txt | Path to benchmarks for evaluation. "
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"Download links are provided in doc/tutorials/dnn/dnn_text_spotting/dnn_text_spotting.markdown}";
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void fourPointsTransform(const Mat& frame, const Point2f vertices[], Mat& result);
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bool sortPts(const Point& p1, const Point& p2);
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int main(int argc, char** argv)
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{
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// Parse arguments
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CommandLineParser parser(argc, argv, keys);
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parser.about("Use this script to run an end-to-end inference sample of textDetectionModel and textRecognitionModel APIs\n"
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"Use -h for more information");
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if (argc == 1 || parser.has("help"))
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{
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parser.printMessage();
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return 0;
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}
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float binThresh = parser.get<float>("binaryThreshold");
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float polyThresh = parser.get<float>("polygonThreshold");
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uint maxCandidates = parser.get<uint>("maxCandidate");
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String detModelPath = parser.get<String>("detModelPath");
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String recModelPath = parser.get<String>("recModelPath");
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String vocPath = parser.get<String>("vocabularyPath");
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double unclipRatio = parser.get<double>("unclipRatio");
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int height = parser.get<int>("inputHeight");
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int width = parser.get<int>("inputWidth");
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int imreadRGB = parser.get<int>("RGBInput");
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if (!parser.check())
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{
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parser.printErrors();
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return 1;
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}
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// Load networks
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CV_Assert(!detModelPath.empty());
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TextDetectionModel_DB detector(detModelPath);
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detector.setBinaryThreshold(binThresh)
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.setPolygonThreshold(polyThresh)
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.setUnclipRatio(unclipRatio)
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.setMaxCandidates(maxCandidates);
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CV_Assert(!recModelPath.empty());
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TextRecognitionModel recognizer(recModelPath);
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// Load vocabulary
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CV_Assert(!vocPath.empty());
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std::ifstream vocFile;
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vocFile.open(samples::findFile(vocPath));
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CV_Assert(vocFile.is_open());
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String vocLine;
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std::vector<String> vocabulary;
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while (std::getline(vocFile, vocLine)) {
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vocabulary.push_back(vocLine);
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}
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recognizer.setVocabulary(vocabulary);
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recognizer.setDecodeType("CTC-greedy");
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// Parameters for Detection
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double detScale = 1.0 / 255.0;
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Size detInputSize = Size(width, height);
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Scalar detMean = Scalar(122.67891434, 116.66876762, 104.00698793);
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detector.setInputParams(detScale, detInputSize, detMean);
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// Parameters for Recognition
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double recScale = 1.0 / 127.5;
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Scalar recMean = Scalar(127.5);
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Size recInputSize = Size(100, 32);
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recognizer.setInputParams(recScale, recInputSize, recMean);
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// Create a window
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static const std::string winName = "Text_Spotting";
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// Input data
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Mat frame = imread(samples::findFile(parser.get<String>("inputImage")));
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std::cout << frame.size << std::endl;
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// Inference
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std::vector< std::vector<Point> > detResults;
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detector.detect(frame, detResults);
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if (detResults.size() > 0) {
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// Text Recognition
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Mat recInput;
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if (!imreadRGB) {
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cvtColor(frame, recInput, cv::COLOR_BGR2GRAY);
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} else {
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recInput = frame;
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}
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std::vector< std::vector<Point> > contours;
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for (uint i = 0; i < detResults.size(); i++)
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{
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const auto& quadrangle = detResults[i];
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CV_CheckEQ(quadrangle.size(), (size_t)4, "");
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contours.emplace_back(quadrangle);
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std::vector<Point2f> quadrangle_2f;
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for (int j = 0; j < 4; j++)
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quadrangle_2f.emplace_back(quadrangle[j]);
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// Transform and Crop
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Mat cropped;
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fourPointsTransform(recInput, &quadrangle_2f[0], cropped);
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std::string recognitionResult = recognizer.recognize(cropped);
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std::cout << i << ": '" << recognitionResult << "'" << std::endl;
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putText(frame, recognitionResult, quadrangle[3], FONT_HERSHEY_SIMPLEX, 1, Scalar(0, 0, 255), 2);
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}
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polylines(frame, contours, true, Scalar(0, 255, 0), 2);
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} else {
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std::cout << "No Text Detected." << std::endl;
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}
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imshow(winName, frame);
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waitKey();
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return 0;
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}
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void fourPointsTransform(const Mat& frame, const Point2f vertices[], Mat& result)
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{
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const Size outputSize = Size(100, 32);
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Point2f targetVertices[4] = {
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Point(0, outputSize.height - 1),
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Point(0, 0),
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Point(outputSize.width - 1, 0),
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Point(outputSize.width - 1, outputSize.height - 1)
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};
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Mat rotationMatrix = getPerspectiveTransform(vertices, targetVertices);
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warpPerspective(frame, result, rotationMatrix, outputSize);
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#if 0
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imshow("roi", result);
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waitKey();
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#endif
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}
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bool sortPts(const Point& p1, const Point& p2)
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{
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return p1.x < p2.x;
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}
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