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  • basemap 画图按照 shape 文件裁切图片, 经纬度转为web墨卡托

       vis_clevs = [0, 0.2, 0.5, 1, 2, 3, 5, 10, 20, 30, 9999],
    vis_colors = ['#642B00', '#9A00FF', '#FE0300', '#F95C00', '#FDB157', '#FFFF00', '#76FD2C', '#94E0EC', '#C7ECFF', '#FFFFFF']

    fig = plt.figure(figsize=(16, 8)) ax = fig.add_axes([-0.00001, 0, 1.00001, 1]) sf = shapefile.Reader(shppath + '.shp') # encoding='utf-8' 默认 utf-8 也可以设置别的 m = Basemap(llcrnrlon=left_lon, urcrnrlon=right_lon, llcrnrlat=left_lat, urcrnrlat=right_lat, resolution='l', ax=ax)   # 添加自定义 色卡 和值 cmap_mosaic = mpl.colors.ListedColormap(colors) norm = mpl.colors.BoundaryNorm(clevss, ncolors=cmap_mosaic.N, clip=True) im1 = m.contourf(lons, lats, data, levels=clevss, norm=norm, cmap=cmap_mosaic)    # 裁切 clip, vertices = clip_region(sf, ax) for cour in im1.collections: cour.set_clip_path(clip)
    def clip_region(sf, ax):
        """
        把地图按照shape文件裁切
        :param sf:
        :param ax:
        :return:
        """
        for shape_rec in sf.shapeRecords():
            vertices = []
            codes = []
            pts = shape_rec.shape.points
            prt = list(shape_rec.shape.parts) + [len(pts)]
            for i in range(len(prt) - 1):
                for j in range(prt[i], prt[i + 1]):
                    vertices.append((pts[j][0], pts[j][1]))
                codes += [matplotlib.path.Path.MOVETO]
                codes += [matplotlib.path.Path.LINETO] * (prt[i + 1] - prt[i] - 2)
                codes += [matplotlib.path.Path.CLOSEPOLY]
            clip = matplotlib.path.Path(vertices, codes)
            clip = matplotlib.patches.PathPatch(clip, transform=ax.transData)
        return clip, vertices
    def wgs84toWebMercator(lon, lat):
        '''
        将经纬度转为web墨卡托下的坐标,转换公式如下
        :param lon: 经度,需传入numpy数组,范围为[-180,180]
        :param lat: 纬度,需传入numpy数组,范围为[-85.05,85.05]
        :return:x,横坐标,对应于经度;y,纵坐标,对应于纬度
        '''
        x = lon * 20037508.342789 / 180
        y = np.log(np.tan((90 + lat) * np.pi / 360)) / (np.pi / 180)
        y = y * 20037508.34789 / 180
        return x, y
    
    
    def EqlLatLonToWebMerc(sPicName, nIsLevel=0):
        '''
            将等经纬度图转为web墨卡托投影图
            :param sPicName: 传入等经纬度图像全路径名称
            :param nIsLevel: 是否为EC分层绘图
            '''
        image = Image.open(sPicName)
        data = np.array(Image.open(sPicName))
        lon, lat = np.meshgrid(np.linspace(left_lon, right_lon, image.size[0]),
                               np.linspace(right_lat, left_lat, image.size[1]), )
        color_r = data[:, :, 0]
        color_g = data[:, :, 1]
        color_b = data[:, :, 2]
        color_a = data[:, :, 3]
        lon_0, lon_1, lat_0, lat_1 = 60, 150, 0, 60  # 经纬度范围
        if nIsLevel == 1:
            resolution = 8000  # 设置分辨率
        else:
            resolution = 4000
        all_x, all_y = wgs84toWebMercator(
            np.array([lon_0, lon_1]), np.array([lat_0, lat_1]))
        all_col = (all_x[1] - all_x[0]) / resolution
        all_row = (all_y[1] - all_y[0]) / resolution
        x, y = wgs84toWebMercator(lon, lat)
        target_col = ((x - all_x[0]) / resolution)[0]
        target_row = ((all_y[1] - y) / resolution)[:, 0]
        f = insert_data2d(target_col, target_row, color_r, )
        res_r = f(np.arange(int(all_col)), np.arange(int(all_row)))
        f = insert_data2d(target_col, target_row, color_g, )
        res_g = f(np.arange(int(all_col)), np.arange(int(all_row)))
        f = insert_data2d(target_col, target_row, color_b, )
        res_b = f(np.arange(int(all_col)), np.arange(int(all_row)))
        f = insert_data2d(target_col, target_row, color_a, )
        res_a = f(np.arange(int(all_col)), np.arange(int(all_row)))
        Image.fromarray(np.dstack((res_r, res_g, res_b, res_a)
                                  ).astype('uint8')).save(sPicName)
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  • 原文地址:https://www.cnblogs.com/luochunxi/p/14872081.html
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