def curveFromBin(binValues, pb, delta=1):
     '''
     binValues: 经排序的数值列表
     '''
     N = len(binValues)
     binCumulateCount = np.array(range(1, N + 1))
     li = Interpolate(binCumulateCount, binValues, delta)
     cnt = pb * N / 100
     bin = li.evalArray(cnt, sorted=True)
     return CumulativeCurve(bin, cnt)
Example #2
0
def main1():
    random.seed(0)
    np.random.seed(0)
    ll = Localization(grid_len=10)
    # ll.init_data()
    inter = Interpolate(ll.sensors, ll.means, ll.stds)  #''' args... '''
    sensors_inter, means_inter, stds_inter = inter.idw_inter(factor=4)
    ll_inter = Localization(grid_len=40)
    ll_inter.init_data_direct(ll.covariance, sensors_inter, means_inter,
                              stds_inter)
Example #3
0
    def input(self):
        '''
        '''
        fig, ax = plt.subplots(1)

        self.filename = self.filelist[self.date]
        self.data = Interpolate(filename=self.filename, bounds=c.BOUNDS)
        xyz = self.data.xyz

        ax.scatter(x=xyz[:, 0], y=xyz[:, 1], c=xyz[:, 2], cmap='viridis')

        title = self._set_title(fn=self.filename)
        self._format_plt(fig=fig, ax=ax, title=title)

        plt.close('all')

        return fig
Example #4
0
 def __init__(self, module_2):
     super(Module1, self).__init__()
     self.layer1 = nn.Sequential(
         nn.MaxPool2d(kernel_size=2, stride=2),  # 2x
         Inception(128, 32, [(3, 32, 32), (5, 32, 32), (7, 32, 32)]),
         Inception(128, 32, [(3, 32, 32), (5, 32, 32), (7, 32, 32)]),
         module_2,
         Inception(128, 32, [(3, 64, 32), (5, 64, 32), (7, 64, 32)]),
         Inception(128, 16, [(3, 32, 16), (7, 32, 16), (11, 32, 16)]),
         Interpolate(scale_factor=2, mode='nearest'))
     self.layer2 = nn.Sequential(
         Inception(128, 16, [(3, 64, 16), (7, 64, 16), (11, 64, 16)]))
 def __init__(self):
     super(Module4, self).__init__()
     self.layer1 = nn.Sequential(
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]))
     self.layer2 = nn.Sequential(
         nn.AvgPool2d(kernel_size=2, stride=2),
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         Interpolate(scale_factor=2,
                     mode='nearest')  # Up to 8x, 256 channel
     )
Example #6
0
 def __init__(self, module_3):
   super(Module2, self).__init__()
   self.layer1 = nn.Sequential(
                   nn.MaxPool2d(kernel_size=2, stride=2), # 4x
                   Inception(128, 32, [(3,32,32), (5,32,32), (7,32,32)]),
                   Inception(128, 64, [(3,32,64), (5,32,64), (7,32,64)]),
                   module_3,
                   Inception(256, 64, [(3,32,64), (5,32,64), (7,32,64)]),
                   Inception(256, 32, [(3,32,32), (5,32,32), (7,32,32)]),
                   Interpolate(scale_factor=2, mode='nearest') # up to 2x, output is 128 channel
                 )
   self.layer2 = nn.Sequential(
                   Inception(128, 32, [(3,32,32), (5,32,32), (7,32,32)]),
                   Inception(128, 32, [(3,64,32), (7,64,32), (11,64,32)])
                 )
    def curveFromBinCount(binCounts, pb, delta=1):
        '''
        binCounts: 元素为(bin,count)元组的列表,可以是多次累积,bin可以无序
        '''
        from collections import Counter
        c0 = Counter()
        for bin, cnt in binCounts:
            c0[bin] += cnt

        c1 = sorted(c0.items(), key=lambda item: item[0])
        clen = len(c1)

        if c1[0][1] == 0:
            b = np.zeros(clen)
            binCumulateCount = np.zeros(clen)
            b[0] = c1[0][0]
            binCumulateCount[0] = 0
            for i in range(1, clen - 1):
                b[i] = b[i - 1] + 2 * (c1[i][0] - b[i - 1])
                binCumulateCount[i] = binCumulateCount[i - 1] + c1[i][1]
            b[-1] = c1[-1][0]
            binCumulateCount[-1] = binCumulateCount[-2]
        else:
            b = np.zeros(clen + 1)
            binCumulateCount = np.zeros(clen + 1)
            b[0] = c1[0][0] - delta
            binCumulateCount[0] = 0
            for i in range(clen):
                b[i + 1] = c1[i][0]
                binCumulateCount[i + 1] = binCumulateCount[i] + c1[i][1]

        N = binCumulateCount[-1]
        li = Interpolate(binCumulateCount, b, 0)
        cnt = pb * N / 100
        bin = li.evalArray(cnt, sorted=True)
        return CumulativeCurve(bin, cnt)
 def __init__(self, module_4):
     super(Module3, self).__init__()
     self.layer1 = nn.Sequential(
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         Inception(256, 64, [(3, 64, 64), (7, 64, 64), (11, 64, 64)]))
     self.layer2 = nn.Sequential(
         nn.AvgPool2d(kernel_size=2, stride=2),  # 8x
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         module_4,  # down 16x then up to 8x
         Inception(256, 64, [(3, 32, 64), (5, 32, 64), (7, 32, 64)]),
         Inception(256, 64, [(3, 64, 64), (7, 64, 64), (11, 64, 64)]),
         Interpolate(scale_factor=2,
                     mode='nearest')  # up to 4x. 256 channel
     )
    def merge(curves, pb):
        """
        curves: 元素为(bins,counts)元组的列表
        """
        binList = []
        for c in curves:
            binList.append(c[0])
        bs = np.unique(np.ravel(np.array(binList)))

        bsLen = len(bs)
        binCounts = np.zeros(bsLen)

        for cbin, cCount in curves:
            li = Interpolate(cbin, cCount, 0)
            cs = li.evalArray(bs, sorted=True)
            binCounts = binCounts + cs

        newTotal = binCounts[-1]
        li = Interpolate(binCounts * 100 / newTotal, bs, 0)
        newbin = li.evalArray(pb, sorted=True)
        return CumulativeCurve(newbin, pb * newTotal / 100)
Example #10
0
 def cumulativeCount(self, b):
     if not self._interpolateFromBin:
         self._interpolateFromBin = Interpolate(self._bin, self._cnt, 0)
     return self._interpolateFromBin.eval(b)
Example #11
0
 def p(self, r):
     if self._interpolateFromPct is None:
         self._interpolateFromPct = Interpolate(self._pb, self._bin, 0)
     return self._interpolateFromPct.innerEval(r)
Example #12
0
class CumulativeCurve:
    """
    累积概率曲线定义为小于等于bin值的概率
      最大值对应100
      最小值对应1/Count,略大于0,因此概率0对应的bin值取为min-delta
    pb: 累积概率曲线的概率分档点,缺省为
      range(0,101,1),[0.01,0.1,0.5,99.5,99.9,99.99],[0.27,4.55,95.45,99.73]
    delta: 原始数据的min和累积概率为0时分档bin间的差,缺省为
      0
    """
    pb = np.hstack((range(0, 101, 1), [0.01, 0.1, 0.5, 99.5, 99.9,
                                       99.99], [0.27, 4.55, 95.45, 99.73]))
    pb.sort()

    def __init__(self, bin, cnt):
        self._bin, self._cnt = bin, cnt
        self._N = cnt[-1]
        self._pb = cnt * 100 / self._N
        self._interpolateFromPct = None
        self._interpolateFromBin = None
        self._sum = None
        self._sum2 = None

    def __hash__(self):
        return hash((self._bin.tobytes(), self._cnt.tobytes()))

    def __repr__(self):
        return "bin: {}\ncnt: {}\n".format(self._bin, self._cnt)

    @staticmethod
    def almostEqual(a, b):
        if a == b:
            return True
        if a.__class__ != b.__class__:
            return False
        if a._N != b._N:
            return False
        if ((max(abs(a._bin - b._bin)) < 1E-5)
                and (max(abs(a._cnt - b._cnt)) < 1E-5)):
            return True
        return False

    @staticmethod
    def importCSV(filename):
        """
        文件格式
        bin         pb    cnt
        13518.0 ,  0.0,   0.0
        15635.97, 0.01, 7.705
        ......
        """
        bin, cnt = np.loadtxt(filename,
                              delimiter=',',
                              usecols=(0, 2),
                              unpack=True)
        return CumulativeCurve(bin, cnt)

    def exportCSV(self, filename):
        with open(filename, 'wt') as f:
            writer = csv.writer(f)
            for i in range(len(self._pb)):
                writer.writerow((self._bin[i], self._pb[i], self._cnt[i]))

    def getCurve(self):
        return self._bin, self._cnt

    @property
    def max(self):
        return self._bin[-1]

    @property
    def min(self):
        '''比实际的最小值小delta'''
        return self._bin[0]

    @property
    def count(self):
        return self._N

    def p(self, r):
        if self._interpolateFromPct is None:
            self._interpolateFromPct = Interpolate(self._pb, self._bin, 0)
        return self._interpolateFromPct.innerEval(r)

    @property
    def median(self):
        return self.p(50)

    def cumulativeCount(self, b):
        if not self._interpolateFromBin:
            self._interpolateFromBin = Interpolate(self._bin, self._cnt, 0)
        return self._interpolateFromBin.eval(b)

    def cumulativePercentage(self, b):
        if not self._interpolateFromBin:
            self._interpolateFromBin = Interpolate(self._bin, self._cnt, 0)
        return self._interpolateFromBin.eval(b) / self._N

    def rangeCount(self, a, b):
        return self.cumulativeCount(b) - self.cumulativeCount(a)

    def binCount(self):
        cntlen = len(self._cnt)
        v = []
        v.append((self._bin[0], 0))
        for i in range(1, cntlen):
            v.append(((self._bin[i] + self._bin[i - 1]) / 2,
                      self._cnt[i] - self._cnt[i - 1]))
        v.append((self._bin[-1], 0))
        return v

    @property
    def sum(self):
        if self._sum is not None:
            return self._sum
        s = 0
        for b, c in self.binCount():
            s += b * c
        self._sum = s
        return s

    @property
    def sum2(self):
        if self._sum2 is not None:
            return self._sum2
        s2 = 0
        for b, c in self.binCount():
            s2 += b * b * c
        self._sum2 = s2
        return s2

    @property
    def avg(self):
        return self.sum / self._N

    @property
    def std(self):
        s = self.sum
        s2 = self.sum2
        n = self._N
        assert (n > 1)
        return math.sqrt((s2 - s * s / n) / (n - 1))

    def sample(n=1):
        assert (n > 0)
        if n == 1:
            return self.p(np.random.rand())
        else:
            return [self.p(np.random.rand()) for i in range(n)]

    @staticmethod
    def curveFromBin(binValues, pb, delta=1):
        '''
        binValues: 经排序的数值列表
        '''
        N = len(binValues)
        binCumulateCount = np.array(range(1, N + 1))
        li = Interpolate(binCumulateCount, binValues, delta)
        cnt = pb * N / 100
        bin = li.evalArray(cnt, sorted=True)
        return CumulativeCurve(bin, cnt)

    @staticmethod
    def curveFromBinCount(binCounts, pb, delta=1):
        '''
        binCounts: 元素为(bin,count)元组的列表,可以是多次累积,bin可以无序
        '''
        from collections import Counter
        c0 = Counter()
        for bin, cnt in binCounts:
            c0[bin] += cnt

        c1 = sorted(c0.items(), key=lambda item: item[0])
        clen = len(c1)

        if c1[0][1] == 0:
            b = np.zeros(clen)
            binCumulateCount = np.zeros(clen)
            b[0] = c1[0][0]
            binCumulateCount[0] = 0
            for i in range(1, clen - 1):
                b[i] = b[i - 1] + 2 * (c1[i][0] - b[i - 1])
                binCumulateCount[i] = binCumulateCount[i - 1] + c1[i][1]
            b[-1] = c1[-1][0]
            binCumulateCount[-1] = binCumulateCount[-2]
        else:
            b = np.zeros(clen + 1)
            binCumulateCount = np.zeros(clen + 1)
            b[0] = c1[0][0] - delta
            binCumulateCount[0] = 0
            for i in range(clen):
                b[i + 1] = c1[i][0]
                binCumulateCount[i + 1] = binCumulateCount[i] + c1[i][1]

        N = binCumulateCount[-1]
        li = Interpolate(binCumulateCount, b, 0)
        cnt = pb * N / 100
        bin = li.evalArray(cnt, sorted=True)
        return CumulativeCurve(bin, cnt)

    @staticmethod
    def merge(curves, pb):
        """
        curves: 元素为(bins,counts)元组的列表
        """
        binList = []
        for c in curves:
            binList.append(c[0])
        bs = np.unique(np.ravel(np.array(binList)))

        bsLen = len(bs)
        binCounts = np.zeros(bsLen)

        for cbin, cCount in curves:
            li = Interpolate(cbin, cCount, 0)
            cs = li.evalArray(bs, sorted=True)
            binCounts = binCounts + cs

        newTotal = binCounts[-1]
        li = Interpolate(binCounts * 100 / newTotal, bs, 0)
        newbin = li.evalArray(pb, sorted=True)
        return CumulativeCurve(newbin, pb * newTotal / 100)
Example #13
0
 def cumulativePercentage(self, b):
     if not self._interpolateFromBin:
         self._interpolateFromBin = Interpolate(self._bin, self._cnt, 0)
     return self._interpolateFromBin.eval(b) / self._N
Example #14
0
class Interact(param.Parameterized):
    '''

    '''
    def __init__(self):
        super(Interact, self).__init__()
        self.filelist = os.listdir(name + '/data')
        self.filelist.sort()
        self.dates = [dt.strptime(fn[:8], '%Y%m%d') for fn in self.filelist]
        self.dict = {
            d.strftime('%Y-%m-%d'): i
            for i, d in enumerate(self.dates)
        }

    nums = [i for i in range(74)]  #update this
    date = param.Selector(default=70, objects=nums)
    res = param.Integer(30, bounds=(10, 300), step=10)
    sigma = param.Number(1.0, bounds=(0.0, 3.0))

    @staticmethod
    def _format_plt(fig,
                    ax,
                    title,
                    m=0.02,
                    bgc='#292929',
                    axc='#eee',
                    lblc='#fff'):
        ax.margins(m)
        ax.set_aspect(aspect=1)
        ax.set_xlabel('Easting')
        ax.set_ylabel('Northing')
        ax.set_title(title, color=axc, loc='left', pad=20)
        ax.xaxis.label.set_color(lblc)
        ax.yaxis.label.set_color(lblc)
        ax.tick_params(axis='x', colors=lblc)
        ax.tick_params(axis='y', colors=lblc)
        ax.spines['bottom'].set_color(axc)
        ax.spines['top'].set_color(axc)
        ax.spines['right'].set_color(axc)
        ax.spines['left'].set_color(axc)
        ax.set_facecolor(bgc)
        fig.patch.set_facecolor(bgc)

    @staticmethod
    def _set_title(fn, opt='scatter'):
        '''
        '''
        date = fn[:4] + '-' + fn[4:6] + '-' + fn[6:8]

        if opt == 'scatter':
            return date + ': LiDAR Pointcloud'
        if opt == 'grid':
            return date + ': Interpolation'

    @param.depends('date')
    def input(self):
        '''
        '''
        fig, ax = plt.subplots(1)

        self.filename = self.filelist[self.date]
        self.data = Interpolate(filename=self.filename, bounds=c.BOUNDS)
        xyz = self.data.xyz

        ax.scatter(x=xyz[:, 0], y=xyz[:, 1], c=xyz[:, 2], cmap='viridis')

        title = self._set_title(fn=self.filename)
        self._format_plt(fig=fig, ax=ax, title=title)

        plt.close('all')

        return fig

    @param.depends('res', 'sigma')
    def output(self):
        '''
        '''
        fig, ax = plt.subplots(1)

        grid = self.data.interpolate_grid(xyz=self.data.xyz, res=self.res)
        self.array = ndimage.gaussian_filter(grid, sigma=self.sigma)

        ax.imshow(self.array, origin='lower')

        title = self._set_title(fn=self.data.filename, opt='grid')
        self._format_plt(fig=fig, ax=ax, title=title)

        plt.close('all')

        return fig

    def export(self):
        '''
        '''
        outfile = TemporaryFile()
        np.save(outfile, self.array)
        _ = outfile.seek(0)

        res = str(self.res)
        res = res if len(res) == 3 else '0' + res
        sigma = str(self.sigma).replace(".", "")
        sigma = sigma if len(sigma) == 2 else sigma + '0'

        params = f'R{res}S{sigma}'
        name = f'{self.filename[:8]}_NN{params}.npy'
        return pn.widgets.FileDownload(file=outfile, filename=name)