def prepare_serialized_examples(self, serialized_examples):
# set the mapping from the fields to data types in the proto
num_features = len(self.feature_names)
assert num_features > 0, "self.feature_names is empty!"
assert len(self.feature_names) == len(self.feature_sizes), \
"length of feature_names (={}) != length of feature_sizes (={})".format( \
len(self.feature_names), len(self.feature_sizes))
feature_map = {"video_id": tf.FixedLenFeature([], tf.string),
"labels": tf.VarLenFeature(tf.int64)}
for feature_index in range(num_features):
feature_map[self.feature_names[feature_index]] = tf.FixedLenFeature(
[self.feature_sizes[feature_index]], tf.float32)
features = tf.parse_example(serialized_examples, features=feature_map)
labels = tf.sparse_to_indicator(features["labels"], self.num_classes)
labels.set_shape([None, self.num_classes])
concatenated_features = tf.concat([
features[feature_name] for feature_name in self.feature_names], 1)
return features["video_id"], concatenated_features, labels, tf.ones([tf.shape(serialized_examples)[0]])
readers.py 文件源码
python
阅读 25
收藏 0
点赞 0
评论 0
评论列表
文章目录