from keras.datasets import cifar10
# load dataset
(trainX, trainy), (testX, testy) = cifar10.load_data()
# summarize loaded dataset
print('Train: X=%s, y=%s' % (trainX.shape, trainy.shape))
print('Test: X=%s, y=%s' % (testX.shape, testy.shape))
Train: X=(50000, 32, 32, 3), y=(50000, 1)
Test: X=(10000, 32, 32, 3), y=(10000, 1)
trainMask = (trainy == 1) | (trainy == 8) | (trainy == 9)
testMask = (testy == 1) | (testy == 8) | (testy == 9)
HOW TO FILTER THE TRAIN AND TEST BASED ON MASK ? like..
trainX = trainX[trainMask] ,
testX = testX[testMask]
trainy = trainy[trainMask] .. One Dimention Works.. Not trainX = trainX[trainMask]
CodePudding user response:
what you're looking for is np.where()
. see the code
TrainX = TrainX[np.where(trainMask)]
TestX = TestX[np.where(testMask)]
CodePudding user response:
This should do the trick:
trainX = trainX[trainMask.flatten()]