在TensorFlow中打印预测名称

时间:2019-01-23 09:21:22

标签: python tensorflow

我正在使用此模型通过TensorFlow服务生成预测。

http://download.tensorflow.org/models/official/20181001_resnet/savedmodels/resnet_v2_fp32_savedmodel_NCHW.tar.gz

我可以得到预测,但是得到的结果只有971个班级:

{'predictions': [{'probabilities': [1.55508e-05, 8.52272e-05, 0.000124575, 0.000202289, 7.25561e-05, 0.00125153, 0.000195685, 0.000298364, 6.305e-05, 0.000101759, 0.000189796, 9.83266e-06, 6.09115e-06, 2.93628e-05, 3.79306e-05, 1.80906e-05, 3.27449e-05, 1.44569e-05, 2.08072e-05, 0.000211307, 2.92737e-05, 2.62217e-05, 5.72919e-05, 0.000113042, 2.7489e-05, 4.75314e-05, 3.24912e-05, 9.47271e-06, 0.000175823, 1.07195e-05, 2.23769e-05, 2.77867e-05, 9.41769e-06, 2.75326e-06, 5.0539e-05, 0.000196899, 1.57362e-05, 9.59799e-05, 3.38195e-05, 7.26347e-06, 6.13557e-05, 5.6595e-05, 2.1883e-05, 3.92613e-05, 2.65449e-05, 5.75036e-05, 0.000152569, 8.00665e-05, 2.52358e-05, 7.63134e-05, 1.58771e-05, 0.00046693, 8.97672e-05, 2.64159e-05, 0.000107967, 0.000105322, 2.51052e-05, 0.000134213, 2.02501e-05, 8.42264e-05, 5.74879e-05, 0.000147237, 8.60201e-05, 0.000159229, 2.82999e-05, 7.0453e-05, 9.804e-05, 1.53984e-05, 0.000442353, 4.83388e-05, 0.000111974, 1.64856e-05, 3.9036e-05, 8.38488e-06, 8.2569e-05, 4.60937e-05, 1.9807e-05, 0.000101196, 0.00014236, 0.000169874, 0.000836153, 9.40354e-05, 4.6951e-05, 0.000131597, 2.86648e-05, 0.000158368, 5.29119e-05, 3.52403e-05, 7.17581e-05, 0.000116447, 0.000253711, 5.35324e-05, 8.56567e-06, 4.87063e-05, 0.000110679, 2.18005e-05, 8.59478e-06, 7.40535e-05, 2.38494e-05, 3.12719e-05, 0.000714874, 0.000145422, 0.000137946, 9.94839e-05, 0.000283478, 0.000357132, 2.73016e-05, 0.0002482, 8.15625e-05, 7.40048e-05, 3.81499e-05, 9.95147e-06, 2.86458e-05, 6.22204e-05, 0.000123885, 8.62779e-05, 3.16152e-05, 2.91354e-05, 5.67827e-05, 0.000652813, 0.000101906, 1.61919e-05, 2.92731e-05, 4.40727e-05, 8.18691e-06, 2.21699e-05, 5.32086e-05, 3.21545e-05, 3.22796e-05, 2.6318e-05, 1.88785e-05, 2.11514e-05, 1.48076e-05, 7.21377e-05, 7.36493e-06, 0.000353744, 0.000141821, 8.97949e-06, 1.61471e-05, 0.000122686, 4.4602e-05, 2.3205e-05, 4.94825e-05, 1.67007e-05, 6.61634e-05, 8.84246e-05, 0.000172353, 7.35944e-05, 0.000391683, 0.000185004, 0.00039224, 0.000324578, 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如何打印预测名称? 我发现this 但是我得到了:

错误:

    if len(preds.shape) != 2 or preds.shape[1] != 1000:
AttributeError: 'list' object has no attribute 'shape'

代码:

  r = requests.post(URL, json=data)
  if r.status_code == 200:
    print(r.json())
    results = r.json()
    predictions = results.get('predictions')
    print('Predicted:', decode_predictions(predictions[0]['probabilities']))
  else:
    print("Request error")

0 个答案:

没有答案