167 lines
		
	
	
		
			5.8 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			167 lines
		
	
	
		
			5.8 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
| #!/usr/bin/env python
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| 
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| '''
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| The sample demonstrates how to train Random Trees classifier
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| (or Boosting classifier, or MLP, or Knearest, or Support Vector Machines) using the provided dataset.
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| 
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| We use the sample database letter-recognition.data
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| from UCI Repository, here is the link:
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| 
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| Newman, D.J. & Hettich, S. & Blake, C.L. & Merz, C.J. (1998).
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| UCI Repository of machine learning databases
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| [http://www.ics.uci.edu/~mlearn/MLRepository.html].
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| Irvine, CA: University of California, Department of Information and Computer Science.
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| 
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| The dataset consists of 20000 feature vectors along with the
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| responses - capital latin letters A..Z.
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| The first 10000 samples are used for training
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| and the remaining 10000 - to test the classifier.
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| ======================================================
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|   Models: RTrees, KNearest, Boost, SVM, MLP
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| '''
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| 
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| # Python 2/3 compatibility
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| from __future__ import print_function
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| 
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| import numpy as np
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| import cv2
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| 
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| def load_base(fn):
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|     a = np.loadtxt(fn, np.float32, delimiter=',', converters={ 0 : lambda ch : ord(ch)-ord('A') })
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|     samples, responses = a[:,1:], a[:,0]
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|     return samples, responses
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| 
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| class LetterStatModel(object):
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|     class_n = 26
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|     train_ratio = 0.5
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| 
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|     def load(self, fn):
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|         self.model.load(fn)
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|     def save(self, fn):
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|         self.model.save(fn)
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| 
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|     def unroll_samples(self, samples):
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|         sample_n, var_n = samples.shape
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|         new_samples = np.zeros((sample_n * self.class_n, var_n+1), np.float32)
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|         new_samples[:,:-1] = np.repeat(samples, self.class_n, axis=0)
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|         new_samples[:,-1] = np.tile(np.arange(self.class_n), sample_n)
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|         return new_samples
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| 
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|     def unroll_responses(self, responses):
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|         sample_n = len(responses)
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|         new_responses = np.zeros(sample_n*self.class_n, np.int32)
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|         resp_idx = np.int32( responses + np.arange(sample_n)*self.class_n )
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|         new_responses[resp_idx] = 1
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|         return new_responses
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| 
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| class RTrees(LetterStatModel):
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|     def __init__(self):
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|         self.model = cv2.ml.RTrees_create()
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| 
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|     def train(self, samples, responses):
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|         sample_n, var_n = samples.shape
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|         self.model.setMaxDepth(20)
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|         self.model.train(samples, cv2.ml.ROW_SAMPLE, responses.astype(int))
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| 
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|     def predict(self, samples):
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|         ret, resp = self.model.predict(samples)
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|         return resp.ravel()
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| 
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| 
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| class KNearest(LetterStatModel):
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|     def __init__(self):
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|         self.model = cv2.ml.KNearest_create()
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| 
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|     def train(self, samples, responses):
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|         self.model.train(samples, cv2.ml.ROW_SAMPLE, responses)
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| 
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|     def predict(self, samples):
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|         retval, results, neigh_resp, dists = self.model.findNearest(samples, k = 10)
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|         return results.ravel()
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| 
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| 
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| class Boost(LetterStatModel):
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|     def __init__(self):
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|         self.model = cv2.ml.Boost_create()
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| 
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|     def train(self, samples, responses):
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|         sample_n, var_n = samples.shape
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|         new_samples = self.unroll_samples(samples)
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|         new_responses = self.unroll_responses(responses)
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|         var_types = np.array([cv2.ml.VAR_NUMERICAL] * var_n + [cv2.ml.VAR_CATEGORICAL, cv2.ml.VAR_CATEGORICAL], np.uint8)
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| 
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|         self.model.setWeakCount(15)
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|         self.model.setMaxDepth(10)
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|         self.model.train(cv2.ml.TrainData_create(new_samples, cv2.ml.ROW_SAMPLE, new_responses.astype(int), varType = var_types))
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| 
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|     def predict(self, samples):
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|         new_samples = self.unroll_samples(samples)
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|         ret, resp = self.model.predict(new_samples)
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| 
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|         return resp.ravel().reshape(-1, self.class_n).argmax(1)
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| 
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| 
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| class SVM(LetterStatModel):
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|     def __init__(self):
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|         self.model = cv2.ml.SVM_create()
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| 
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|     def train(self, samples, responses):
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|         self.model.setType(cv2.ml.SVM_C_SVC)
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|         self.model.setC(1)
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|         self.model.setKernel(cv2.ml.SVM_RBF)
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|         self.model.setGamma(.1)
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|         self.model.train(samples, cv2.ml.ROW_SAMPLE, responses.astype(int))
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| 
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|     def predict(self, samples):
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|         ret, resp = self.model.predict(samples)
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|         return resp.ravel()
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| 
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| 
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| class MLP(LetterStatModel):
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|     def __init__(self):
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|         self.model = cv2.ml.ANN_MLP_create()
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| 
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|     def train(self, samples, responses):
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|         sample_n, var_n = samples.shape
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|         new_responses = self.unroll_responses(responses).reshape(-1, self.class_n)
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|         layer_sizes = np.int32([var_n, 100, 100, self.class_n])
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| 
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|         self.model.setLayerSizes(layer_sizes)
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|         self.model.setTrainMethod(cv2.ml.ANN_MLP_BACKPROP)
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|         self.model.setBackpropMomentumScale(0)
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|         self.model.setBackpropWeightScale(0.001)
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|         self.model.setTermCriteria((cv2.TERM_CRITERIA_COUNT, 20, 0.01))
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|         self.model.setActivationFunction(cv2.ml.ANN_MLP_SIGMOID_SYM, 2, 1)
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| 
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|         self.model.train(samples, cv2.ml.ROW_SAMPLE, np.float32(new_responses))
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| 
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|     def predict(self, samples):
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|         ret, resp = self.model.predict(samples)
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|         return resp.argmax(-1)
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| 
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| from tests_common import NewOpenCVTests
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| 
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| class letter_recog_test(NewOpenCVTests):
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| 
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|     def test_letter_recog(self):
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| 
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|         eps = 0.01
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| 
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|         models = [RTrees, KNearest, Boost, SVM, MLP]
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|         models = dict( [(cls.__name__.lower(), cls) for cls in models] )
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|         testErrors = {RTrees: (98.930000, 92.390000), KNearest: (94.960000, 92.010000),
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|          Boost: (85.970000, 74.920000), SVM: (99.780000, 95.680000), MLP: (90.060000, 87.410000)}
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| 
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|         for model in models:
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|             Model = models[model]
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|             classifier = Model()
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| 
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|             samples, responses = load_base(self.repoPath + '/samples/data/letter-recognition.data')
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|             train_n = int(len(samples)*classifier.train_ratio)
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| 
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|             classifier.train(samples[:train_n], responses[:train_n])
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|             train_rate = np.mean(classifier.predict(samples[:train_n]) == responses[:train_n].astype(int))
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|             test_rate  = np.mean(classifier.predict(samples[train_n:]) == responses[train_n:].astype(int))
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| 
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|             self.assertLess(train_rate - testErrors[Model][0], eps)
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|             self.assertLess(test_rate - testErrors[Model][1], eps) | 
