Пример #1
0
class Model(object):
    def __init__(self, param):
        self.c1 = ConvLayer((1, 28, 28), (16, 5, 5), (1, 0), Relu(), param)
        # 4x24x24
        self.p1 = PoolingLayer(self.c1.output_shape, (
            2,
            2,
        ), 2, PoolingTypes.MAX)
        # 4x12x12
        self.c2 = ConvLayer(self.p1.output_shape, (8, 3, 3), (1, 0), Relu(),
                            param)
        # 4x10x10
        self.p2 = PoolingLayer(self.c2.output_shape, (
            2,
            2,
        ), 2, PoolingTypes.MAX)
        # 4x5x5
        self.f1 = FcLayer(self.p2.output_size, 32, Relu(), param)
        self.f2 = FcLayer(self.f1.output_size, 10, Softmax(), param)

    def forward(self, x):
        net = self.c1.forward(x)
        net = self.p1.forward(net)
        net = self.c2.forward(net)
        net = self.p2.forward(net)
        net = self.f1.forward(net)
        net = self.f2.forward(net)
        self.output = net
        return self.output

    def backward(self, y):
        delta = self.output - y
        delta = self.f2.backward(delta, LayerIndexFlags.LastLayer)
        delta = self.f1.backward(delta, LayerIndexFlags.MiddleLayer)
        delta = self.p2.backward(delta, LayerIndexFlags.MiddleLayer)
        delta = self.c2.backward(delta, LayerIndexFlags.MiddleLayer)
        delta = self.p1.backward(delta, LayerIndexFlags.MiddleLayer)
        delta = self.c1.backward(delta, LayerIndexFlags.FirstLayer)

    def update(self, learning_rate):
        self.c1.update()
        self.c2.update()
        self.f1.update()
        self.f2.update()

    def save(self):
        self.c1.save_parameters("c1")
        self.c2.save_parameters("c2")
        self.p1.save_parameters("p1")
        self.p2.save_parameters("p2")
        self.f1.save_parameters("f1")
        self.f2.save_parameters("f2")

    def load(self):
        self.c1.load_parameters("c1")
        self.c2.load_parameters("c2")
        self.p1.load_parameters("p1")
        self.p2.load_parameters("p2")
        self.f1.load_parameters("f1")
        self.f2.load_parameters("f2")
Пример #2
0
class Model(object):
    def __init__(self, param):
        self.c1 = ConvLayer((1, 28, 28), (4, 5, 5), (1, 0), Relu(), param)
        # 4x24x24
        self.p1 = PoolingLayer(self.c1.output_shape, (
            2,
            2,
        ), 2, PoolingTypes.MAX)
        # 4x12x12
        self.f1 = FcLayer(self.p1.output_size, 32, Sigmoid(), param)
        self.f2 = FcLayer(self.f1.output_size, 10, Softmax(), param)

    def forward(self, x):
        a_c1 = self.c1.forward(x)
        a_p1 = self.p1.forward(a_c1)
        a_f1 = self.f1.forward(a_p1)
        a_f2 = self.f2.forward(a_f1)
        self.output = a_f2
        return self.output

    def backward(self, y):
        delta_in = self.output - y
        d_f2 = self.f2.backward(delta_in, LayerIndexFlags.LastLayer)
        d_f1 = self.f1.backward(d_f2, LayerIndexFlags.MiddleLayer)
        d_p1 = self.p1.backward(d_f1, LayerIndexFlags.MiddleLayer)
        d_c1 = self.c1.backward(d_p1, LayerIndexFlags.FirstLayer)

    def update(self, learning_rate):
        self.c1.update()
        self.f1.update()
        self.f2.update()

    def save(self):
        self.c1.save_parameters("c1")
        self.p1.save_parameters("p1")
        self.f1.save_parameters("f1")
        self.f2.save_parameters("f2")

    def load(self):
        self.c1.load_parameters("c1")
        self.p1.load_parameters("p1")
        self.f1.load_parameters("f1")
        self.f2.load_parameters("f2")