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- /*
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- License Agreement
- For Open Source Computer Vision Library
- (3-clause BSD License)
- Copyright (C) 2013, OpenCV Foundation, all rights reserved.
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- this list of conditions and the following disclaimer.
- * Redistributions in binary form must reproduce the above copyright notice,
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- * Neither the names of the copyright holders nor the names of the contributors
- may be used to endorse or promote products derived from this software
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- This software is provided by the copyright holders and contributors "as is" and
- any express or implied warranties, including, but not limited to, the implied
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- */
- #ifndef __OPENCV_FACE_HPP__
- #define __OPENCV_FACE_HPP__
- /**
- @defgroup face Face Analysis
- - @ref face_changelog
- - @ref tutorial_face_main
- */
- #include "opencv2/core.hpp"
- #include "face/predict_collector.hpp"
- #include <map>
- namespace cv { namespace face {
- //! @addtogroup face
- //! @{
- /** @brief Abstract base class for all face recognition models
- All face recognition models in OpenCV are derived from the abstract base class FaceRecognizer, which
- provides a unified access to all face recongition algorithms in OpenCV.
- ### Description
- I'll go a bit more into detail explaining FaceRecognizer, because it doesn't look like a powerful
- interface at first sight. But: Every FaceRecognizer is an Algorithm, so you can easily get/set all
- model internals (if allowed by the implementation). Algorithm is a relatively new OpenCV concept,
- which is available since the 2.4 release. I suggest you take a look at its description.
- Algorithm provides the following features for all derived classes:
- - So called "virtual constructor". That is, each Algorithm derivative is registered at program
- start and you can get the list of registered algorithms and create instance of a particular
- algorithm by its name (see Algorithm::create). If you plan to add your own algorithms, it is
- good practice to add a unique prefix to your algorithms to distinguish them from other
- algorithms.
- - Setting/Retrieving algorithm parameters by name. If you used video capturing functionality from
- OpenCV highgui module, you are probably familar with cv::cvSetCaptureProperty,
- ocvcvGetCaptureProperty, VideoCapture::set and VideoCapture::get. Algorithm provides similar
- method where instead of integer id's you specify the parameter names as text Strings. See
- Algorithm::set and Algorithm::get for details.
- - Reading and writing parameters from/to XML or YAML files. Every Algorithm derivative can store
- all its parameters and then read them back. There is no need to re-implement it each time.
- Moreover every FaceRecognizer supports the:
- - **Training** of a FaceRecognizer with FaceRecognizer::train on a given set of images (your face
- database!).
- - **Prediction** of a given sample image, that means a face. The image is given as a Mat.
- - **Loading/Saving** the model state from/to a given XML or YAML.
- - **Setting/Getting labels info**, that is stored as a string. String labels info is useful for
- keeping names of the recognized people.
- @note When using the FaceRecognizer interface in combination with Python, please stick to Python 2.
- Some underlying scripts like create_csv will not work in other versions, like Python 3. Setting the
- Thresholds +++++++++++++++++++++++
- Sometimes you run into the situation, when you want to apply a threshold on the prediction. A common
- scenario in face recognition is to tell, whether a face belongs to the training dataset or if it is
- unknown. You might wonder, why there's no public API in FaceRecognizer to set the threshold for the
- prediction, but rest assured: It's supported. It just means there's no generic way in an abstract
- class to provide an interface for setting/getting the thresholds of *every possible* FaceRecognizer
- algorithm. The appropriate place to set the thresholds is in the constructor of the specific
- FaceRecognizer and since every FaceRecognizer is a Algorithm (see above), you can get/set the
- thresholds at runtime!
- Here is an example of setting a threshold for the Eigenfaces method, when creating the model:
- @code
- // Let's say we want to keep 10 Eigenfaces and have a threshold value of 10.0
- int num_components = 10;
- double threshold = 10.0;
- // Then if you want to have a cv::FaceRecognizer with a confidence threshold,
- // create the concrete implementation with the appropriate parameters:
- Ptr<FaceRecognizer> model = EigenFaceRecognizer::create(num_components, threshold);
- @endcode
- Sometimes it's impossible to train the model, just to experiment with threshold values. Thanks to
- Algorithm it's possible to set internal model thresholds during runtime. Let's see how we would
- set/get the prediction for the Eigenface model, we've created above:
- @code
- // The following line reads the threshold from the Eigenfaces model:
- double current_threshold = model->getDouble("threshold");
- // And this line sets the threshold to 0.0:
- model->set("threshold", 0.0);
- @endcode
- If you've set the threshold to 0.0 as we did above, then:
- @code
- //
- Mat img = imread("person1/3.jpg", IMREAD_GRAYSCALE);
- // Get a prediction from the model. Note: We've set a threshold of 0.0 above,
- // since the distance is almost always larger than 0.0, you'll get -1 as
- // label, which indicates, this face is unknown
- int predicted_label = model->predict(img);
- // ...
- @endcode
- is going to yield -1 as predicted label, which states this face is unknown.
- ### Getting the name of a FaceRecognizer
- Since every FaceRecognizer is a Algorithm, you can use Algorithm::name to get the name of a
- FaceRecognizer:
- @code
- // Create a FaceRecognizer:
- Ptr<FaceRecognizer> model = EigenFaceRecognizer::create();
- // And here's how to get its name:
- String name = model->name();
- @endcode
- */
- class CV_EXPORTS_W FaceRecognizer : public Algorithm
- {
- public:
- /** @brief Trains a FaceRecognizer with given data and associated labels.
- @param src The training images, that means the faces you want to learn. The data has to be
- given as a vector\<Mat\>.
- @param labels The labels corresponding to the images have to be given either as a vector\<int\>
- or a Mat of type CV_32SC1.
- The following source code snippet shows you how to learn a Fisherfaces model on a given set of
- images. The images are read with imread and pushed into a std::vector\<Mat\>. The labels of each
- image are stored within a std::vector\<int\> (you could also use a Mat of type CV_32SC1). Think of
- the label as the subject (the person) this image belongs to, so same subjects (persons) should have
- the same label. For the available FaceRecognizer you don't have to pay any attention to the order of
- the labels, just make sure same persons have the same label:
- @code
- // holds images and labels
- vector<Mat> images;
- vector<int> labels;
- // using Mat of type CV_32SC1
- // Mat labels(number_of_samples, 1, CV_32SC1);
- // images for first person
- images.push_back(imread("person0/0.jpg", IMREAD_GRAYSCALE)); labels.push_back(0);
- images.push_back(imread("person0/1.jpg", IMREAD_GRAYSCALE)); labels.push_back(0);
- images.push_back(imread("person0/2.jpg", IMREAD_GRAYSCALE)); labels.push_back(0);
- // images for second person
- images.push_back(imread("person1/0.jpg", IMREAD_GRAYSCALE)); labels.push_back(1);
- images.push_back(imread("person1/1.jpg", IMREAD_GRAYSCALE)); labels.push_back(1);
- images.push_back(imread("person1/2.jpg", IMREAD_GRAYSCALE)); labels.push_back(1);
- @endcode
- Now that you have read some images, we can create a new FaceRecognizer. In this example I'll create
- a Fisherfaces model and decide to keep all of the possible Fisherfaces:
- @code
- // Create a new Fisherfaces model and retain all available Fisherfaces,
- // this is the most common usage of this specific FaceRecognizer:
- //
- Ptr<FaceRecognizer> model = FisherFaceRecognizer::create();
- @endcode
- And finally train it on the given dataset (the face images and labels):
- @code
- // This is the common interface to train all of the available cv::FaceRecognizer
- // implementations:
- //
- model->train(images, labels);
- @endcode
- */
- CV_WRAP virtual void train(InputArrayOfArrays src, InputArray labels) = 0;
- /** @brief Updates a FaceRecognizer with given data and associated labels.
- @param src The training images, that means the faces you want to learn. The data has to be given
- as a vector\<Mat\>.
- @param labels The labels corresponding to the images have to be given either as a vector\<int\> or
- a Mat of type CV_32SC1.
- This method updates a (probably trained) FaceRecognizer, but only if the algorithm supports it. The
- Local Binary Patterns Histograms (LBPH) recognizer (see createLBPHFaceRecognizer) can be updated.
- For the Eigenfaces and Fisherfaces method, this is algorithmically not possible and you have to
- re-estimate the model with FaceRecognizer::train. In any case, a call to train empties the existing
- model and learns a new model, while update does not delete any model data.
- @code
- // Create a new LBPH model (it can be updated) and use the default parameters,
- // this is the most common usage of this specific FaceRecognizer:
- //
- Ptr<FaceRecognizer> model = LBPHFaceRecognizer::create();
- // This is the common interface to train all of the available cv::FaceRecognizer
- // implementations:
- //
- model->train(images, labels);
- // Some containers to hold new image:
- vector<Mat> newImages;
- vector<int> newLabels;
- // You should add some images to the containers:
- //
- // ...
- //
- // Now updating the model is as easy as calling:
- model->update(newImages,newLabels);
- // This will preserve the old model data and extend the existing model
- // with the new features extracted from newImages!
- @endcode
- Calling update on an Eigenfaces model (see EigenFaceRecognizer::create), which doesn't support
- updating, will throw an error similar to:
- @code
- OpenCV Error: The function/feature is not implemented (This FaceRecognizer (FaceRecognizer.Eigenfaces) does not support updating, you have to use FaceRecognizer::train to update it.) in update, file /home/philipp/git/opencv/modules/contrib/src/facerec.cpp, line 305
- terminate called after throwing an instance of 'cv::Exception'
- @endcode
- @note The FaceRecognizer does not store your training images, because this would be very
- memory intense and it's not the responsibility of te FaceRecognizer to do so. The caller is
- responsible for maintaining the dataset, he want to work with.
- */
- CV_WRAP virtual void update(InputArrayOfArrays src, InputArray labels);
- /** @overload */
- CV_WRAP_AS(predict_label) int predict(InputArray src) const;
- /** @brief Predicts a label and associated confidence (e.g. distance) for a given input image.
- @param src Sample image to get a prediction from.
- @param label The predicted label for the given image.
- @param confidence Associated confidence (e.g. distance) for the predicted label.
- The suffix const means that prediction does not affect the internal model state, so the method can
- be safely called from within different threads.
- The following example shows how to get a prediction from a trained model:
- @code
- using namespace cv;
- // Do your initialization here (create the cv::FaceRecognizer model) ...
- // ...
- // Read in a sample image:
- Mat img = imread("person1/3.jpg", IMREAD_GRAYSCALE);
- // And get a prediction from the cv::FaceRecognizer:
- int predicted = model->predict(img);
- @endcode
- Or to get a prediction and the associated confidence (e.g. distance):
- @code
- using namespace cv;
- // Do your initialization here (create the cv::FaceRecognizer model) ...
- // ...
- Mat img = imread("person1/3.jpg", IMREAD_GRAYSCALE);
- // Some variables for the predicted label and associated confidence (e.g. distance):
- int predicted_label = -1;
- double predicted_confidence = 0.0;
- // Get the prediction and associated confidence from the model
- model->predict(img, predicted_label, predicted_confidence);
- @endcode
- */
- CV_WRAP void predict(InputArray src, CV_OUT int &label, CV_OUT double &confidence) const;
- /** @brief - if implemented - send all result of prediction to collector that can be used for somehow custom result handling
- @param src Sample image to get a prediction from.
- @param collector User-defined collector object that accepts all results
- To implement this method u just have to do same internal cycle as in predict(InputArray src, CV_OUT int &label, CV_OUT double &confidence) but
- not try to get "best@ result, just resend it to caller side with given collector
- */
- CV_WRAP_AS(predict_collect) virtual void predict(InputArray src, Ptr<PredictCollector> collector) const = 0;
- /** @brief Saves a FaceRecognizer and its model state.
- Saves this model to a given filename, either as XML or YAML.
- @param filename The filename to store this FaceRecognizer to (either XML/YAML).
- Every FaceRecognizer overwrites FaceRecognizer::save(FileStorage& fs) to save the internal model
- state. FaceRecognizer::save(const String& filename) saves the state of a model to the given
- filename.
- The suffix const means that prediction does not affect the internal model state, so the method can
- be safely called from within different threads.
- */
- CV_WRAP virtual void write(const String& filename) const;
- /** @brief Loads a FaceRecognizer and its model state.
- Loads a persisted model and state from a given XML or YAML file . Every FaceRecognizer has to
- overwrite FaceRecognizer::load(FileStorage& fs) to enable loading the model state.
- FaceRecognizer::load(FileStorage& fs) in turn gets called by
- FaceRecognizer::load(const String& filename), to ease saving a model.
- */
- CV_WRAP virtual void read(const String& filename);
- /** @overload
- Saves this model to a given FileStorage.
- @param fs The FileStorage to store this FaceRecognizer to.
- */
- virtual void write(FileStorage& fs) const CV_OVERRIDE = 0;
- /** @overload */
- virtual void read(const FileNode& fn) CV_OVERRIDE = 0;
- /** @overload */
- virtual bool empty() const CV_OVERRIDE = 0;
- /** @brief Sets string info for the specified model's label.
- The string info is replaced by the provided value if it was set before for the specified label.
- */
- CV_WRAP virtual void setLabelInfo(int label, const String& strInfo);
- /** @brief Gets string information by label.
- If an unknown label id is provided or there is no label information associated with the specified
- label id the method returns an empty string.
- */
- CV_WRAP virtual String getLabelInfo(int label) const;
- /** @brief Gets vector of labels by string.
- The function searches for the labels containing the specified sub-string in the associated string
- info.
- */
- CV_WRAP virtual std::vector<int> getLabelsByString(const String& str) const;
- /** @brief threshold parameter accessor - required for default BestMinDist collector */
- virtual double getThreshold() const = 0;
- /** @brief Sets threshold of model */
- virtual void setThreshold(double val) = 0;
- protected:
- // Stored pairs "label id - string info"
- std::map<int, String> _labelsInfo;
- };
- //! @}
- }}
- #include "opencv2/face/facerec.hpp"
- #include "opencv2/face/facemark.hpp"
- #include "opencv2/face/facemark_train.hpp"
- #include "opencv2/face/facemarkLBF.hpp"
- #include "opencv2/face/facemarkAAM.hpp"
- #include "opencv2/face/face_alignment.hpp"
- #include "opencv2/face/mace.hpp"
- #endif // __OPENCV_FACE_HPP__
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