PeterTor commited on
Commit
10647af
1 Parent(s): 042f41a

Update AGBD.py

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Files changed (1) hide show
  1. AGBD.py +48 -7
AGBD.py CHANGED
@@ -57,6 +57,47 @@ feature_dtype = {'s2_num_days': Value('int16'),
57
  "solar_elev": Value('float32'),
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  "urban_prop":Value('uint8')}
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60
 
61
  def encode_lat_lon(lat, lon):
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  """
@@ -215,8 +256,6 @@ class NewDataset(datasets.GeneratorBasedBuilder):
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  return super().as_streaming_dataset(split=split, base_path=base_path)
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217
  def _info(self):
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- with open('statistics.pkl', 'rb') as f:
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- self.norm_values = pickle.load(f)
220
 
221
  all_features = {
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  'input': datasets.Sequence(datasets.Sequence(datasets.Sequence(datasets.Value('float32')))),
@@ -251,14 +290,14 @@ class NewDataset(datasets.GeneratorBasedBuilder):
251
 
252
  else:
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  patch = np.asarray(d["input"])
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- patch[:12] = denormalize_bands(patch[:12], self.norm_values['S2_bands'],['B01', 'B02', 'B03', 'B04', 'B05', 'B06', 'B07', 'B08', 'B8A', 'B09','B11', 'B12'])
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- patch[12:14] = denormalize_bands(patch[12:14], self.norm_values['ALOS_bands'], ['HH', 'HV'])
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- patch[14] = denormalize_data(patch[14], self.norm_values['CH']['ch'])
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- patch[15] = denormalize_data(patch[15], self.norm_values['CH']['std'])
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  patch[16] = decode_lc(patch[16], 'cos')
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  patch[17] = decode_lc(patch[17], 'sin')
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  patch[18] = patch[18] * 100
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- patch[19] = denormalize_data(patch[19], self.norm_values['DEM'])
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263
 
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  lat, lon = d["metadata"]["lat"],d["metadata"]["lon"]
@@ -277,3 +316,5 @@ class NewDataset(datasets.GeneratorBasedBuilder):
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  data[feat] = d["metadata"][feat]
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279
  yield i, data
 
 
 
57
  "solar_elev": Value('float32'),
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  "urban_prop":Value('uint8')}
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60
+ norm_values = {'ALOS_bands': {
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+ 'HH': {'mean': -10.381429, 'std': 8.561741, 'min': -83.0, 'max': 13.329468, 'p1': -19.542107, 'p99': -2.402588},
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+ 'HV': {'mean': -16.722847, 'std': 8.718428, 'min': -83.0, 'max': 11.688309, 'p1': -29.285168, 'p99': -8.773987}},
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+ 'S2_bands': {'B01': {'mean': 0.12478869, 'std': 0.024433358, 'min': 1e-04, 'max': 1.8808, 'p1': 0.0787,
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+ 'p99': 0.1946},
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+ 'B02': {'mean': 0.13480005, 'std': 0.02822557, 'min': 1e-04, 'max': 2.1776, 'p1': 0.0925,
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+ 'p99': 0.2216},
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+ 'B03': {'mean': 0.16031432, 'std': 0.032037303, 'min': 1e-04, 'max': 2.12, 'p1': 0.1035,
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+ 'p99': 0.2556},
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+ 'B04': {'mean': 0.1532097, 'std': 0.038628064, 'min': 1e-04, 'max': 2.0032, 'p1': 0.1023,
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+ 'p99': 0.2816},
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+ 'B05': {'mean': 0.20312776, 'std': 0.04205057, 'min': 0.0422, 'max': 1.7502, 'p1': 0.1178,
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+ 'p99': 0.319},
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+ 'B06': {'mean': 0.32636437, 'std': 0.07139242, 'min': 0.0502, 'max': 1.7245, 'p1': 0.1633,
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+ 'p99': 0.519},
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+ 'B07': {'mean': 0.36605212, 'std': 0.08555025, 'min': 0.0616, 'max': 1.7149, 'p1': 0.1776,
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+ 'p99': 0.6076},
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+ 'B08': {'mean': 0.3811653, 'std': 0.092815965, 'min': 1e-04, 'max': 1.7488, 'p1': 0.1691,
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+ 'p99': 0.646},
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+ 'B8A': {'mean': 0.3910436, 'std': 0.0896364, 'min': 0.055, 'max': 1.688, 'p1': 0.1871,
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+ 'p99': 0.6386},
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+ 'B09': {'mean': 0.3910644, 'std': 0.0836445, 'min': 0.0012, 'max': 1.7915, 'p1': 0.2124,
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+ 'p99': 0.6241},
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+ 'B11': {'mean': 0.2917373, 'std': 0.07472579, 'min': 0.0953, 'max': 1.648, 'p1': 0.1334,
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+ 'p99': 0.4827},
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+ 'B12': {'mean': 0.21169408, 'std': 0.05880649, 'min': 0.0975, 'max': 1.6775, 'p1': 0.115,
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+ 'p99': 0.3872}},
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+ 'CH': {'ch': {'mean': 9.736144, 'std': 9.493601, 'min': 0.0, 'max': 61.0, 'p1': 0.0, 'p99': 38.0},
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+ 'std': {'mean': 7.9882116, 'std': 4.549494, 'min': 0.0, 'max': 254.0, 'p1': 0.0, 'p99': 18.0}},
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+ 'DEM': {'mean': 604.63727, 'std': 588.02094, 'min': -82.0, 'max': 5205.0, 'p1': 507.0, 'p99': 450.0},
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+ 'Sentinel_metadata': {
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+ 'S2_vegetation_score': {'mean': 89.168724, 'std': 17.17321, 'min': 20.0, 'max': 100.0, 'p1': 29.0,
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+ 'p99': 100.0},
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+ 'S2_date': {'mean': 299.1638, 'std': 192.87402, 'min': -165.0, 'max': 623.0, 'p1': 253.0,
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+ 'p99': 277.0}}, 'GEDI': {
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+ 'agbd': {'mean': 66.97266, 'std': 98.66588, 'min': 0.0, 'max': 499.99985, 'p1': 0.9703503, 'p99': 163.46234},
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+ 'agbd_se': {'mean': 8.360701, 'std': 4.211524, 'min': 2.981795, 'max': 25.041483, 'p1': 2.9830396,
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+ 'p99': 8.612499},
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+ 'rh98': {'mean': 12.074685, 'std': 10.276359, 'min': -1.1200076, 'max': 111.990005, 'p1': 2.3599916,
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+ 'p99': 6.9500012},
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+ 'date': {'mean': 361.7431, 'std': 175.37294, 'min': 0.0, 'max': 624.0, 'p1': 360.0, 'p99': 146.0}}}
101
 
102
  def encode_lat_lon(lat, lon):
103
  """
 
256
  return super().as_streaming_dataset(split=split, base_path=base_path)
257
 
258
  def _info(self):
 
 
259
 
260
  all_features = {
261
  'input': datasets.Sequence(datasets.Sequence(datasets.Sequence(datasets.Value('float32')))),
 
290
 
291
  else:
292
  patch = np.asarray(d["input"])
293
+ patch[:12] = denormalize_bands(patch[:12], norm_values['S2_bands'],['B01', 'B02', 'B03', 'B04', 'B05', 'B06', 'B07', 'B08', 'B8A', 'B09','B11', 'B12'])
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+ patch[12:14] = denormalize_bands(patch[12:14], norm_values['ALOS_bands'], ['HH', 'HV'])
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+ patch[14] = denormalize_data(patch[14], norm_values['CH']['ch'])
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+ patch[15] = denormalize_data(patch[15], norm_values['CH']['std'])
297
  patch[16] = decode_lc(patch[16], 'cos')
298
  patch[17] = decode_lc(patch[17], 'sin')
299
  patch[18] = patch[18] * 100
300
+ patch[19] = denormalize_data(patch[19], norm_values['DEM'])
301
 
302
 
303
  lat, lon = d["metadata"]["lat"],d["metadata"]["lon"]
 
316
  data[feat] = d["metadata"][feat]
317
 
318
  yield i, data
319
+
320
+