1

I wonder if someone know how to convert the depth map of google street view (encoded as base64) into an image or a 2D matrix. I'm using Python and was able to get the base64 string, decode it and save it to a .png file. However, the exported png file cannot be open by any graphic viewer... I guess the base64 code wasn't decoded correctly...

Here is a post that mentioned the base64 string in GSV.

Here is my code:

#URL of the json file of a GSV depth map
url_depthmap='http://maps.google.com/cbk?output=json&cb_client=maps_sv&v=4&dm=1&pm=1&ph=1&hl=en&panoid=lcptgwtxfJ6DccSzyWp0zA'
# getting the json file
r = requests.get(url_depthmap)
# open it
depth_json= r.json()

# get the base64 string of the depth map
data=depth_json['model']['depth_map']
# fix the 'inccorrect padding' error. The length of the string needs to be divisible by 4.
data += "=" * ((4 - len(data) % 4) % 4)
# convert the URL safe format to regular format.
data=data.replace('-','+').replace('_','/')



data = base64.decodestring(data) # decode the string
data=zlib.decompress(data) #decompress the data

# write it to a png file
image_result = open('downloads/deer_decode.png', 'wb')
image_result.write(data)
0

looking at https://github.com/proog128/GSVPanoDepth.js/blob/master/src/GSVPanoDepth.js and starting with your piece of code, here is my overall processing:

import base64
import zlib
import numpy as np
import struct
import matplotlib.pyplot as plt


def parse(b64_string):
    # fix the 'inccorrect padding' error. The length of the string needs to be divisible by 4.
    b64_string += "=" * ((4 - len(b64_string) % 4) % 4)
    # convert the URL safe format to regular format.
    data = b64_string.replace("-", "+").replace("_", "/")

    data = base64.b64decode(data)  # decode the string
    data = zlib.decompress(data)  # decompress the data
    return np.array([d for d in data])


def parseHeader(depthMap):
    return {
        "headerSize": depthMap[0],
        "numberOfPlanes": getUInt16(depthMap, 1),
        "width": getUInt16(depthMap, 3),
        "height": getUInt16(depthMap, 5),
        "offset": getUInt16(depthMap, 7),
    }


def get_bin(a):
    ba = bin(a)[2:]
    return "0" * (8 - len(ba)) + ba


def getUInt16(arr, ind):
    a = arr[ind]
    b = arr[ind + 1]
    return int(get_bin(b) + get_bin(a), 2)


def getFloat32(arr, ind):
    return bin_to_float("".join(get_bin(i) for i in arr[ind : ind + 4][::-1]))


def bin_to_float(binary):
    return struct.unpack("!f", struct.pack("!I", int(binary, 2)))[0]


def parsePlanes(header, depthMap):
    indices = []
    planes = []
    n = [0, 0, 0]

    for i in range(header["width"] * header["height"]):
        indices.append(depthMap[header["offset"] + i])

    for i in range(header["numberOfPlanes"]):
        byteOffset = header["offset"] + header["width"] * header["height"] + i * 4 * 4
        n = [0, 0, 0]
        n[0] = getFloat32(depthMap, byteOffset)
        n[1] = getFloat32(depthMap, byteOffset + 4)
        n[2] = getFloat32(depthMap, byteOffset + 8)
        d = getFloat32(depthMap, byteOffset + 12)
        planes.append({"n": n, "d": d})

    return {"planes": planes, "indices": indices}


def computeDepthMap(header, indices, planes):

    v = [0, 0, 0]
    w = header["width"]
    h = header["height"]

    depthMap = np.empty(w * h)

    sin_theta = np.empty(h)
    cos_theta = np.empty(h)
    sin_phi = np.empty(w)
    cos_phi = np.empty(w)

    for y in range(h):
        theta = (h - y - 0.5) / h * np.pi
        sin_theta[y] = np.sin(theta)
        cos_theta[y] = np.cos(theta)

    for x in range(w):
        phi = (w - x - 0.5) / w * 2 * np.pi + np.pi / 2
        sin_phi[x] = np.sin(phi)
        cos_phi[x] = np.cos(phi)

    for y in range(h):
        for x in range(w):
            planeIdx = indices[y * w + x]

            v[0] = sin_theta[y] * cos_phi[x]
            v[1] = sin_theta[y] * sin_phi[x]
            v[2] = cos_theta[y]

            if planeIdx > 0:
                plane = planes[planeIdx]
                t = np.abs(
                    plane["d"]
                    / (
                        v[0] * plane["n"][0]
                        + v[1] * plane["n"][1]
                        + v[2] * plane["n"][2]
                    )
                )
                depthMap[y * w + (w - x - 1)] = t
            else:
                depthMap[y * w + (w - x - 1)] = 9999999999999999999.0
    return {"width": w, "height": h, "depthMap": depthMap}


# see  https://stackoverflow.com/questions/56242758/python-equivalent-for-javascripts-dataview
# for bytes-parsing reference

# see https://github.com/proog128/GSVPanoDepth.js/blob/master/src/GSVPanoDepth.js
# for overall processing reference

# Base64 string from request to:
# https://maps.google.com/cbk?output=xml&ll=45.508457,-73.532738&dm=1
# edit long and lat
s = "eJzt2gt0FNUdx_FsQtgEFJIQiAlvQglBILzktTOZ2YitloKKD6qAFjy2KD5ABTlqMxUsqICcVqqC1VoUqS34TkMhydjaorYCStXSKkeEihQoICpUFOzuJruZO4_dmdmZe2fY3_cc4RCS-L_z-c_sguaNy8rKzgrkZSGEEEIIIYQQQgghhBBCCCGEEEIIIYQQQgghhBBCCCGEEEIIIYQQQgghhBBCCCGEEEIIIYQQQgghhBBCCCGEEEIIIYQQQgghhBBCCCGEEEIIIYQQQgghhBCbgsFgB9YzIFYFo_wdsAAZWbC5DliATCwYVPhjATKsYNC0f5s2baiNhagUDFrzb47aeMjVgkF7_liC06JgWv7YAX-n1rfjjx3wbVp-m_5YAV_mpH-bPGpjI4dy1h8L4Lcc9scC-Cyn_bEA_sq6vzF_zB8b4Ktc8McC-Cg3_LEAvkmH3wF_LIBfcskfC-CTHH37r_DHAvgj1_yxAL7IPX8sgB9y0R8L4IPc9McCeD9X_bEAns9dfyyA13PZHwvg8Rz11_LnFVI7SVZWO2UU_71-7jTybwd_67nuT28B4G8j-Gd2LvsXFtJbAPjbyLq_MT_8_RcFf1oLAH8bwd9fFRQUOPr9aPhTWoDT378glqPfEv4-qSCRo98W_v6owM_-dBYA_jaCvz_ytz-VBYC_jeDvsfprP1SeRd0_yVfA39W0_uV0_R393z_gbzX42w3-1rP-8g9_d9P4D4C_yeBvOfhTr7Q06W_D33Z-8Y-l-ABBrvYf4B9_LX_Cf6iTQxsFf8vBn3qp_FULAH_T-cq_dQHgr1v37t0tfgX8LUfJf6hp_-7KLB4G_paj5W96IL_5d9Yp-VeY9j839qPX_I35k_zxT9d_2LDmn3v06NH6wdPBP_kCkP4jR44s7T8y1pCWRkeL_2JI1L9Xr14K_16tpT0-e_8ePUj_jq2d3v6juUhRxNL-vZIV8Q-Hwwr_0YO02R2fhf-w-M8a_45kp4l_GVncv8xs5eWRHxT-0Y_1S6T8TOvjwz_NdP1LkhXDN_zdLjqVR_5R-Ot9ijZz48PffmdF0_XvZjtDTl3_Ir3OUhcZtahrJL0z0PIfWl1dPSqWrv-YWB70P6O1Tt9qqahoYLwuXXT9E5e-p8V0QWMp_I2cI3VqLqv5M7oqa9tWcZb48QJG_n2jFTdX0ru1qip7_pWVY6OFolVWVtacE68y5h_5UKUgCGr_wZr68Txf0jpQ_BwjonOS_n365ChqTxbIVpZzpiLlZYoVCASIX8eucGIXdP31bmA9LnVdOnXS0YwX91d9WCT2RGUejTwLmZF_RUVFbl9FxfFK7PkrX-IqiWL-Le9lVP6xz-5NVBVpRLRiorMj5eYS_sb47SPnJv1ziA04k7xmigun3YNOhLvunTtQ8bRIUSfDRN1vrSVvqyiZeyr_6GWraC43Wusm2PJXvcnppyjm3wxbpfKvimsXG9TMHq1Pczk66ehr_VUroLmAqquoswjKWl8p3MjI2wK7Kf9EFcpNsOOv8z63Kn5Hx_xbPFX-KdUT8HruSfR1_bUPgRRLYGIR9NfC9F4kdTZUN8Ge0j83d7je1YwsgQ1_o9tXk7E_YZ7ihk_ysp9I199gA1IugY1V0C0lcnr3ujX_WDpLYN1f9Q7CvD8pbsU9hb6hf47ey4ClLdDZBbPLQIncir_OElj11zFsKXFvJz6i8rfJnlo_mb_xQ8DyFljcCPe1tRn4a7ESS2DRn3jvoLsAirtc7W8d3QC_vfrcyfxzkj4E0toCz2Xi9lctgSX_FErq76_ytwOvp69z7hT-KR8CBlvguzWw5h_Ngn9Kp-bv2PprZ_xT65vwzzHzEPD_08DAP3JR0vW3I-eEvxl9c_5mHwJ-fh4Y-xttgCl-W3IO-JvDD5j1t7MCvtqE_Pwk_vorkNrfJn6stPxN61vwz7H0OmB2GbyyDfn5mg0g_HU2IIW_7l8bWci2vwX8gDV_-w8BK1HxVhf1z49cAWN_zQYk9Vd-4nCbq2DL35q-VX8aK0BBW1vcP1bCP1tdUn-jN4o6mVsJy_5W8QM2_F1fAbepdSP8m5dAq0-sgFXyVCXbADv6Jg9ux9_VFXCV2TCtv3EOoqfyzzHtbws_YNvfvRVwzzhZVvzdWQGjy2zG38ZzP559f_UKOLQDbgknz6K_GyuQZAGs6Fs8eFr-mh3IIH_HV8D4EifzTws_4IC_egXS3QHnbc1ky9_ZFbBx4dO0j-aEv2YHMsffwRVIx94mfsA5f8d2wEFUC6Xh79QK2MZP6-BO-mt2wMYSOORptfT8HdkBW_bp4Qec99cuQYb4p70D1vGdOLgr_tolML0FTpzJRs74p7cDVuwdO7h7_va2wLGDWcs5f_s7QJs-ltv-eluQbA2cPZ3pnPW3twS06WPR8TfcBM0quHBEM7ngb3kJktC7d3Da_qly76RJc8vfyha0XgQK7vHIQdm5x3P_xLq5ym9yD3JoeGuCfzQ6_im2gcnJ4R-Nhb8mJicnJmCtD3_qEROw1oc_9YgJWOvDn3rEBKz14U89YgLW-vCnHjEBa334U4-YgLU-_KlHTMBaH_7UIyZgrc_K392__jcbk6MTE7DWhz_1iAlY68OfesQErPXhTz1iAtb68KceMQFrffhTj5iAtT78qUdMwFof_tQjJmCtD3_qEROw1oc_9YgJWOvDn3rEBKz14U89YgLW-vCnHjEBa334U48cgTU_Q3825srYnJ0YgTU__KlHjMCaH_7UI0ZgzQ9_6hEjsOaHP_WIEVjzw596xAis-eFPPWIE1vxs_L3xx3_4w59BxAis-eFPPWIE1vzwpx4xAmt--FOPGIE1P_ypR4zAmh_-1CNGYM0Pf-oRI7Dmhz_1yBky1p8NORGTs3vsAcDkCsA_EfzZxeTs8Ie_okzkh39rmejvkbf_8Ic_i4gZ4M8uJoeHP_wVwZ9dTA4P_0z399ICMDm_R_jhD38mEUPAn1lMDh_IeH-vvPzDH_5MIoaAP7NYHD4aMQT8mcXi8NHIKTLSnw24KhaHj0VMAX9WsTh8LGKKTPP3zOMf_vBnEzEF_FnF4PDNkWNkoD8bb3UMDt8SMQb8GcXg8C0RY2SWv3ce__CHP6PIOTLOnw23JvqHT0TMAX820T98ImKOTPL30OPfM_4MF4D6wT3Ez9LfKw8A2sf20u0Pf_izi5gko_wZaWujfXgiYpJM8ffU7c_W3xsLQPfI3uJn7O-JBaB7Ym_xw5-yv8duf9b-XlgAmsf1Gj9zfw8sAMXDeo6fvT_7BaB3VO_xe8Cf-QZQO6f39L3hz3gBKB3Sgzd_tkf8mW4AnQN6U98z_gz_ayCNw3kUP9tD_gFWK-D6sbyLn-0t_2jkdL7397R9NFdPbztiRH_ye_UFX5Vbx3coYlY_-PuEvTWHz-9q5OQe4fcbuKr0L4CnUp0uTX6f25qKCos3Y33pvRNrCfqxvuIeKUvVBQ0jQy8dv5C7_YQk140qE4-83eepF-Z-wT24W5KXc2XigpsnbdxVvzm0-ZQkDy_sJRZ1v1n4a93vmy5ecTs3ZG_X8M79k0PrF3UNzftGkis79BVnnXw-9P6Yu7l_H5Pk54RuYtuCvsLaBePkg8d3b1pQf1CcW1Ar5F57lN8-OJc__itZvGPKkL6XjNvCn6qrlee8Wyqurb5OXpW_vemSPuWNt71WUBN8f0moYO_chuD_JPny1eXi2ZMWhW6pq-BrX5fknPMGidftnh5aOvylhkOHJXluTkfxH5-WC7vHjxM6S8P5rhUrxQtH1cqzO-1r_OxnbRqrpn5P3DbuDuHXt11affmCjvzkSavDnz8_T5i0eHH1-Y915jeWXCRW1LXhpq96gbvlkCQLh7qIQnZJaOs5O7hv9knyd0b1jcw_ivt0wmBueGSeV7qVicOO3yEf2XF-de23X2zo0P7l8DfTa7i3nsjj978nyVPaDxWv--JYqG7UWu6uI5J84vVssfc7S7gfHdjDf_fqWrlnzzXiwH43yBc98Jdq4doZDbMW7ArnPXkF94fupfz1b0ry2qfGiOUFU7mTg5bxA6-S5Jo3ponbP-rIHdh4Fv_xNknu-dYocdn6WfKkvZub_jOxd2P9_iPhpaHb5SfvW9j0xtbixp-ce1icemxE6Muc5dyrX0jyhyfyxPlPZ_GLd57kBr0iySsmni3-MHsPd2LgyYZ7XpPkZy6bL55x_ZpN0z7N4St2SnL_2lzxq9_dKry54ZdN78jLuKpFi8Rrjrbnp67b1rhpca28_IKnxaG_HTj2uaPjG_ZH9mdhzUcCt6eSG_O3eu6rA5HzF58SpoXncdMmzGl8dZEk3_f0LeJD22bLby1ZX716xIKGrEVbw48-_CB39d7_chv-KcmPbn1PuC1vjsBNXNc0uHAh9_gnPcWmLl0aTn18H79wpiSPLXpC-NOPV4cOX5zVUHVSklcW7xBKtrfj31-6heeX18qXzd0nHp5ZyAtlsxpXXC_JM2pfFIuXLOS4wjHcVZ9J8rEzy8Qb7_6aO1BXyq9_UZLnyJeLj7w0R9jz0Nrq-9_syn__vZlC0Q2z5WObn21a1K174_3zDof3DPhNw_qartWTv75LLlp-hfBo2XNjz7t3PP_1s5K8ZcXjQocr53NjpD3c0A8j86z5l9D5gUF8Xtk6vtfOWnnSlQPCo_94KdfuyM9Db38pyatu3iB-_uS73Auz2_HhP0vyzG4jxKcmb-Rq9q0MTYrsW1Hdw-K-D-7hz19X3zj-xlp5SoUY3lA_ketdsJM7GLkfHzv3A-Guv-fzB7aM5JetjJxv-kLx6ISXN065cwI_a70kZxVdKVx7sIo_OKy0cfUvJPnWxmvCcu-e_FUzahse3yzJ9bPXiHN2_GTTK5_Mb_xBxOPolEeqZxQIPBd4g__kzlo5f9op8YwdS7mbJr7LleyS5HvXfSnsWjVHvrXgmeqbLvxpw6G9H4n_Bz8_xLw"
# decode string + decompress zip
depthMapData = parse(s)
# parse first bytes to describe data
header = parseHeader(depthMapData)
# parse bytes into planes of float values
data = parsePlanes(header, depthMapData)
# compute position and values of pixels
depthMap = computeDepthMap(header, data["indices"], data["planes"])
# process float 1D array into int 2D array with 255 values
im = depthMap["depthMap"]
im[np.where(im == max(im))[0]] = 255
if min(im) < 0:
    im[np.where(im < 0)[0]] = 0
im = im.reshape((depthMap["height"], depthMap["width"])).astype(int)
# display image
plt.imshow(im)
plt.show()

(and save with plt.imsave)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.