コード例 #1
0
ファイル: vol_util.py プロジェクト: chagge/ConvNetPy
def augment(V, crop, grayscale=False):
    # note assumes square outputs of size crop x crop
    # randomly sample a crop in the input volume
    if crop == V.sx: return V

    dx = randi(0, V.sx - crop)
    dy = randi(0, V.sy - crop)

    W = Vol(crop, crop, V.depth)
    for x in xrange(crop):
        for y in xrange(crop):
            if x + dx < 0 or x + dx >= V.sx or \
                y + dy < 0 or y + dy >= V.sy: continue
            for d in xrange(V.depth):
                W.set(x, y, d, V.get(x + dx, y + dy, d))

    if grayscale:
        #flatten into depth=1 array
        G = Vol(crop, crop, 1, 0.0)
        for i in xrange(crop):
            for j in xrange(crop):
                G.set(i, j, 0, W.get(i, j, 0))
        W = G

    return W
コード例 #2
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    def forward(self, V, is_training):
        self.in_act = V
        N = self.out_depth
        V2 = Vol(self.out_sx, self.out_sy, self.out_depth, 0.0)

        if self.out_sx == 1 and self.out_sy == 1:
            for i in xrange(N):
                offset = i * self.group_size
                m = max(V.w[offset:])
                index = V.w[offset:].index(m)
                V2.w[i] = m
                self.switches[i] = offset + index
        else:
            switch_counter = 0
            for x in xrange(V.sx):
                for y in xrange(V.sy):
                    for i in xrange(N):
                        ix = i * self.group_size
                        elem = V.get(x, y, ix)
                        elem_i = 0
                        for j in range(1, self.group_size):
                            elem2 = V.get(x, y, ix + j)
                            if elem2 > elem:
                                elem = elem2
                                elem_i = j
                        V2.set(x, y, i, elem)
                        self.switches[i] = ix + elem_i
                        switch_counter += 1

        self.out_act = V2
        return self.out_act
コード例 #3
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ファイル: vol_util.py プロジェクト: liyuming1978/PyTrafficCar
def augment(V, crop, grayscale=False):
    # note assumes square outputs of size crop x crop
    # randomly sample a crop in the input volume
    if crop == V.sx: return V

    dx = randi(0, V.sx - crop)
    dy = randi(0, V.sy - crop)

    W = Vol(crop, crop, V.depth)
    for x in xrange(crop):
        for y in xrange(crop):
            if x + dx < 0 or x + dx >= V.sx or \
                y + dy < 0 or y + dy >= V.sy:
                continue
            for d in xrange(V.depth):
                W.set(x, y, d, V.get(x + dx, y + dy, d))

    if grayscale:
        #flatten into depth=1 array
        G = Vol(crop, crop, 1, 0.0)
        for i in xrange(crop):
            for j in xrange(crop):
                G.set(i, j, 0, W.get(i, j, 0))
        W = G

    return W
コード例 #4
0
ファイル: nonlinearities.py プロジェクト: chagge/ConvNetPy
    def forward(self, V, is_training):
        self.in_act = V
        N = self.out_depth
        V2 = Vol(self.out_sx, self.out_sy, self.out_depth, 0.0)

        if self.out_sx == 1 and self.out_sy == 1:
            for i in xrange(N):
                offset = i * self.group_size
                m = max(V.w[offset:])
                index = V.w[offset:].index(m)
                V2.w[i] = m
                self.switches[i] = offset + index 
        else:
            switch_counter = 0
            for x in xrange(V.sx):
                for y in xrange(V.sy):
                    for i in xrange(N):
                        ix = i * self.group_size
                        elem = V.get(x, y, ix)
                        elem_i = 0
                        for j in range(1, self.group_size):
                            elem2 = V.get(x, y, ix + j)
                            if elem2 > elem:
                                elem = elem2
                                elem_i = j
                        V2.set(x, y, i, elem)
                        self.switches[i] = ix + elem_i
                        switch_counter += 1

        self.out_act = V2
        return self.out_act
コード例 #5
0
ファイル: cifar10.py プロジェクト: pombredanne/ConvNetPy
def load_data(crop, gray, training=True):
    filename = './data/cifar10_'
    if training:
        filename += 'train.npz'
    else:
        filename += 'test.npz'

    data = numpy.load(filename)
    xs = data['x']
    ys = data['y']

    for i in xrange(len(xs)):
        V = Vol(32, 32, 3, 0.0)
        for d in xrange(3):
            for x in xrange(32):
                for y in xrange(32):
                    px = xs[i][x * 32 + y, d] / 255.0 - 0.5
                    V.set(x, y, d, px)
        if crop:
            V = augment(V, 24, gray)

        y = ys[i]
        yield V, y
コード例 #6
0
ファイル: cifar10.py プロジェクト: Aaronduino/ConvNetPy
def load_data(crop, gray, training=True):
    filename = './data/cifar10_'
    if training:
        filename += 'train.npz'
    else:
        filename += 'test.npz'

    data = numpy.load(filename)
    xs = data['x']
    ys = data['y']

    for i in xrange(len(xs)):
        V = Vol(32, 32, 3, 0.0)
        for d in xrange(3):
            for x in xrange(32):
                for y in xrange(32):
                    px = xs[i][x * 32 + y, d] / 255.0 - 0.5
                    V.set(x, y, d, px)
        if crop:
            V = augment(V, 24, gray)

        y = ys[i]
        yield V, y
コード例 #7
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    def forward(self, V, is_training):
        self.in_act = V
        A = Vol(self.out_sx, self.out_sy, self.out_depth, 0.0)
        switch_counter = 0

        for d in xrange(self.out_depth):
            x = -self.pad
            y = -self.pad
            for ax in xrange(self.out_sx):
                y = -self.pad
                for ay in xrange(self.out_sy):
                    # convolve centered at this particular location
                    max_a = -99999
                    win_x, win_y = -1, -1
                    for fx in xrange(self.sx):
                        for fy in xrange(self.sy):
                            off_x = x + fx
                            off_y = y + fy
                            if off_y >= 0 and off_y < V.sy \
                            and off_x >= 0 and off_x < V.sx:
                                v = V.get(off_x, off_y, d)
                                # max pool
                                if v > max_a:
                                    max_a = v
                                    win_x = off_x
                                    win_y = off_y

                    self.switch_x[switch_counter] = win_x
                    self.switch_y[switch_counter] = win_y
                    switch_counter += 1
                    A.set(ax, ay, d, max_a)

                    y += self.stride
                x += self.stride

        self.out_act = A
        return self.out_act
コード例 #8
0
ファイル: dotproducts.py プロジェクト: pombredanne/ConvNetPy
    def forward(self, V, is_training):
        self.in_act = V
        A = Vol(self.out_sx, self.out_sy, self.out_depth, 0.0)

        v_sx = V.sx
        v_sy = V.sy
        xy_stride = self.stride

        for d in xrange(self.out_depth):
            f = self.filters[d]
            x = -self.pad
            y = -self.pad

            for ay in xrange(self.out_sy):
                x = -self.pad
                for ax in xrange(self.out_sx):
                    # convolve centered at this particular location
                    sum_a = 0.0
                    for fy in xrange(f.sy):
                        off_y = y + fy
                        for fx in xrange(f.sx):
                            # coordinates in the original input array coordinates
                            off_x = x + fx
                            if off_y >= 0 and off_y < V.sy and off_x >= 0 and off_x < V.sx:
                                for fd in xrange(f.depth):
                                    sum_a += f.w[((f.sx * fy) + fx) * f.depth + fd] \
                                    * V.w[((V.sx * off_y) + off_x) * V.depth + fd]

                    sum_a += self.biases.w[d]
                    A.set(ax, ay, d, sum_a)

                    x += xy_stride
                y += xy_stride

        self.out_act = A
        return self.out_act
コード例 #9
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    def forward(self, V, is_training):
        self.in_act = V
        A = Vol(self.out_sx, self.out_sy, self.out_depth, 0.0)

        v_sx = V.sx
        v_sy = V.sy
        xy_stride = self.stride

        for d in xrange(self.out_depth):
            f = self.filters[d]
            x = -self.pad
            y = -self.pad

            for ay in xrange(self.out_sy):
                x = -self.pad
                for ax in xrange(self.out_sx):
                    # convolve centered at this particular location
                    sum_a = 0.0
                    for fy in xrange(f.sy):
                        off_y = y + fy
                        for fx in xrange(f.sx):
                            # coordinates in the original input array coordinates
                            off_x = x + fx
                            if off_y >= 0 and off_y < V.sy and off_x >= 0 and off_x < V.sx:
                                for fd in xrange(f.depth):
                                    sum_a += f.w[((f.sx * fy) + fx) * f.depth + fd] \
                                    * V.w[((V.sx * off_y) + off_x) * V.depth + fd]

                    sum_a += self.biases.w[d]
                    A.set(ax, ay, d, sum_a)

                    x += xy_stride
                y += xy_stride

        self.out_act = A
        return self.out_act