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Local Climate Zone Mapping as Remote Sensing Scene Classification Using Deep Learning: A Case Study of Metropolitan China

Shengjie Liu, Qian Shi

Email: [email protected], [email protected]

This paper is accepted by ISPRS Journal P&RS. [Paper]

Free access via this link before July 4.

Preprint via this link

New Data Released (2020-08-18)!

We've generated a new product of the whole Pearl River Delta region (9+2 cities), available here

New Features

  • Used the Sentinel-2 composite images from 2018-2019 to generate the LCZ map, so the mosaic effect is reduced to a minimum.
  • Included the whole administrative area of the following cities: Guangzhou, Foshan, Zhaoqing, Shenzhen, Dongguan, Huizhou, Zhongshan, Jiangmen, Zhuhai, Macau, and Hong Kong (广州,佛山,肇庆,深圳,东莞,惠州,中山,江门,珠海,澳门,香港)

Pearl River Delta (The Greater Bay Area, old version)

Tiff file is available here (only core urban areas included)

Pearl River Delta (The Greater Bay Area)

Training and Testing Data

Download Training and Testing Data from Google Drive or email me

Region City
The Greater Bay Area Guangzhou, Foshan, Shenzhen, Dongguan, Huizhou, Zhuhai, Zhongshan, Jiangmen, Macau, Hong Kong 广州,佛山,深圳,东莞,惠州,珠海,中山,江门,澳门,香港
The Shanghai Metropolis Shanghai, Hangzhou, Shaoxing 上海,杭州,绍兴
The Beijing Metropolis Beijing, Tianjin, Tangshan 北京,天津,及部分唐山

Load a pretrained model

Download Pretrained Model from Google Drive.

The size of input is with 10 channels

The channel order is (channel & Sentinel-2 band):
[0,1,2,3,4,5,6,7,8,9] = [2,3,4,5,6,7,8,11,12,8A]

Please use the following normalization when applying the model. The subimage should be

import keras 

modelfile = 'modelpath'
model = keras.models.load_model(modelfile)

data = np.float32(data)
data = data/5000.0


for subimage in data:
    model.predict(subimage)