示例#1
0
    def __init__(self, weightsname, *unused, **unused_kw):
        self._net = df.Sequential(  # 48x70  (HxW)
            df.SpatialConvolution(3, 24, (3, 3)),  # 46x68
            df.BatchNormalization(24),
            df.ReLU(),
            df.SpatialConvolution(24, 24, (3, 3)),  # 44x66
            df.BatchNormalization(24),
            df.SpatialMaxPooling((2, 3)),  # 22x22
            df.ReLU(),
            df.SpatialConvolution(24, 48, (3, 3)),  # 20x20
            df.BatchNormalization(48),
            df.ReLU(),
            df.SpatialConvolution(48, 48, (3, 3)),  # 18x18
            df.BatchNormalization(48),
            df.SpatialMaxPooling((2, 2)),  # 9x9
            df.ReLU(),
            df.SpatialConvolution(48, 64, (3, 3)),  # 7x7
            df.BatchNormalization(64),
            df.ReLU(),
            df.SpatialConvolution(64, 64, (3, 3)),  # 5x5
            df.BatchNormalization(64),
            df.ReLU(),
            df.Dropout(0.2),
            Flatten(),
            df.Linear(64 * 5 * 5, 512),
            df.ReLU(),
            df.Dropout(0.5),
            df.Linear(512, 2, init=df.init.normal(0.01)),
            Biternion())

        self._net.__setstate__(np.load(weightsname))
        self._net.evaluate()

        self._aug = AugmentationPipeline(None, None, Cropper((48, 70)))
示例#2
0
def mkaug(Xtr, ytr):
    return AugmentationPipeline(
        Xtr,
        ytr,
        Cropper((48, 70)),
        # Gamma(),
    )
def main():
    X, y, n = pickle.load(gzip.open('data/TownCentre.pkl.gz', 'rb'))
    (Xtr, ytr, ntr), (Xte, yte, nte) = split_dataset(X, y, n, split=0.9)
    Xtr, ytr = Xtr.astype(df.floatX) / 255, ytr.astype(df.floatX)
    Xte, yte = Xte.astype(df.floatX) / 255, yte.astype(df.floatX)
    aug = AugmentationPipeline(Xtr, ytr, Cropper((46, 46)))
    print("Trainset: {}".format(len(Xtr)))
    print("Testset:  {}".format(len(Xte)))

    # Naive deep regression
    # net = mknet_gpu(df.Linear(512, 1, initW=df.init.const(0)))
    # dotrain(net, df.MADCriterion(), aug, Xtr, ytr[:, None])
    # dostats(net, aug, Xtr, batchsize=1000)
    # y_preds = np.squeeze(dopred_deg(net, aug, Xte))

    # Biternion deep regression with cosine criterion
    # net = mknet_gpu(df.Linear(512, 2, initW=df.init.normal(0.01)), Biternion())
    # dotrain(net, CosineCriterion(), aug, Xtr, deg2bit(ytr))
    # dostats(net, aug, Xtr, batchsize=1000)
    # y_preds = bit2deg(np.squeeze(dopred_deg(net, aug, Xte)))

    # Biternion deep regression with Von-Mises criterion
    net = mknet_gpu(df.Linear(512, 2, initW=df.init.normal(0.01)), Biternion())
    dotrain(net, VonMisesBiternionCriterion(1), aug, Xtr, deg2bit(ytr))
    dostats(net, aug, Xtr, batchsize=1000)
    y_preds = bit2deg(np.squeeze(dopred_deg(net, aug, Xte)))

    loss = maad_from_deg(y_preds, yte)
    mean_loss = np.mean(loss)
    std_loss = np.std(loss)
    print("MAAD error (test) : %f ± %f" % (mean_loss, std_loss))

    return
示例#4
0
    def __init__(self, weightsname, *unused, **unused_kw):
        self._net = df.Sequential(                  #     3@46
            df.SpatialConvolution( 3, 24, (3, 3)),  # -> 24@44
            df.BatchNormalization(24),
            df.ReLU(),
            df.SpatialConvolution(24, 24, (3, 3)),  # -> 24@42
            df.BatchNormalization(24),
            df.SpatialMaxPooling((2, 2), ignore_border=False),  # -> 24@21
            df.ReLU(),
            df.SpatialConvolution(24, 48, (3, 3)),  # -> 48@19
            df.BatchNormalization(48),
            df.ReLU(),
            df.SpatialConvolution(48, 48, (3, 3)),  # -> 48@17
            df.BatchNormalization(48),
            df.SpatialMaxPooling((2, 2), ignore_border=False),  # -> 48@9
            df.ReLU(),
            df.SpatialConvolution(48, 64, (3, 3)),  # -> 64@7
            df.BatchNormalization(64),
            df.ReLU(),
            df.SpatialConvolution(64, 64, (3, 3)),  # -> 64@5
            df.BatchNormalization(64),
            df.ReLU(),
            df.Dropout(0.2),
            Flatten(),
            df.Linear(64*5*5, 512),
            df.ReLU(),
            df.Dropout(0.5),
            df.Linear(512, 2, init=df.init.normal(0.01)),
            Biternion()
        )

        self._net.__setstate__(np.load(weightsname))
        self._net.evaluate()

        self._aug = AugmentationPipeline(None, None, Cropper((46, 46)))
    def __init__(self, weightsname, *unused, **unused_kw):
        self._net = df.Sequential(  # 184x76
            df.SpatialConvolution(3, 24, (3, 3)),  # 182x74
            df.BatchNormalization(24),
            df.ReLU(),
            df.SpatialConvolution(24, 24, (3, 3)),  # 180x72
            df.SpatialMaxPooling((3, 3)),  #  60x24
            df.BatchNormalization(24),
            df.ReLU(),
            df.SpatialConvolution(24, 48, (3, 3)),  #  58x22
            df.BatchNormalization(48),
            df.ReLU(),
            df.SpatialConvolution(48, 48, (3, 3)),  #  56x20
            df.SpatialMaxPooling((2, 2)),  #  28x10
            df.BatchNormalization(48),
            df.ReLU(),
            df.SpatialConvolution(48, 64, (3, 3)),  #  26x8
            df.BatchNormalization(64),
            df.ReLU(),
            df.SpatialConvolution(64, 64, (3, 3)),  #  24x6
            df.SpatialMaxPooling((2, 2)),  #  12x3
            df.BatchNormalization(64),
            df.ReLU(),
            df.SpatialConvolution(64, 64, (3, 2)),  #  10x2
            df.BatchNormalization(64),
            df.ReLU(),
            df.Dropout(0.2),
            Flatten(),
            df.Linear(64 * 10 * 2, 512),
            df.ReLU(),
            df.Dropout(0.5),
            df.Linear(512, 2, init=df.init.normal(0.01)),
            Biternion())

        self._net.__setstate__(np.load(weightsname))
        self._net.evaluate()

        self._aug = AugmentationPipeline(None, None, Cropper((184, 76)))
示例#6
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def mkaug(Xtr, ytr):
    return AugmentationPipeline(Xtr, ytr, Cropper((184, 76)))
    data, label, Number = pickle.load(gzip.open('data/TownCentre.pkl.gz',
                                                'rb'))
    # Train,TestData
    (trainX, trainY, trainNum), (testX, testY, testNum) = split(data,
                                                                label,
                                                                Number,
                                                                split=0.9)
    #trainX,trainY = trainX.astype(df.floatX)/255,trainY.astype(df.floatX)
    trainX, trainY = trainX.astype(np.float32) / 255, trainY.astype(np.float32)
    #testX,testY = testX.astype(df.floatX)/255,testY.astype(df.floatX)
    testX, testY = testX.astype(np.float32) / 255, testY.astype(np.float32)
    pdb.set_trace()
    ################### Pure Linear Regression #######################

    aug = AugmentationPipeline(trainX, trainY, Cropper((46, 46)))

    #LinearTrain = [dotrain(net,df.MADCriterion(),aug,trainX,trainY[:,None]) for net in nets_shallow_linreg]
    nets_shallow_linreg = [
        df.Sequential(Flatten(),
                      df.Linear(3 * 46 * 46, 1, init=df.init.const(0)))
        for _ in range(10)
    ]

    LinearPred = [
        Flatten().dopred_deg(net, aug, testX) for net in nets_shallow_linreg
    ]
    Flatten().Error(LinearPred, testY[:, None])

    pdb.set_trace()
    #################### Deep Linear Regression ##################