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- from __future__ import absolute_import
- from __future__ import division
- from __future__ import print_function
- import numpy as np
- import paddle
- __all__ = ['KIEMetric']
- class KIEMetric(object):
- def __init__(self, main_indicator='hmean', **kwargs):
- self.main_indicator = main_indicator
- self.reset()
- self.node = []
- self.gt = []
- def __call__(self, preds, batch, **kwargs):
- nodes, _ = preds
- gts, tag = batch[4].squeeze(0), batch[5].tolist()[0]
- gts = gts[:tag[0], :1].reshape([-1])
- self.node.append(nodes.numpy())
- self.gt.append(gts)
-
-
- def compute_f1_score(self, preds, gts):
- ignores = [0, 2, 4, 6, 8, 10, 12, 14, 16, 18, 20, 22, 24, 25]
- C = preds.shape[1]
- classes = np.array(sorted(set(range(C)) - set(ignores)))
- hist = np.bincount(
- (gts * C).astype('int64') + preds.argmax(1), minlength=C
- **2).reshape([C, C]).astype('float32')
- diag = np.diag(hist)
- recalls = diag / hist.sum(1).clip(min=1)
- precisions = diag / hist.sum(0).clip(min=1)
- f1 = 2 * recalls * precisions / (recalls + precisions).clip(min=1e-8)
- return f1[classes]
- def combine_results(self, results):
- node = np.concatenate(self.node, 0)
- gts = np.concatenate(self.gt, 0)
- results = self.compute_f1_score(node, gts)
- data = {'hmean': results.mean()}
- return data
- def get_metric(self):
- metrics = self.combine_results(self.results)
- self.reset()
- return metrics
- def reset(self):
- self.results = []
- self.node = []
- self.gt = []
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