import tensorflow as tf from onnx_tf.handlers.backend_handler import BackendHandler from onnx_tf.handlers.handler import onnx_op from onnx_tf.handlers.handler import tf_func @onnx_op("Flatten") @tf_func(tf.layers.flatten) class Flatten(BackendHandler): @classmethod def _common(cls, node, **kwargs): x = kwargs["tensor_dict"][node.inputs[0]] shape = tf.shape(x) x_rank = len(x.shape) axis = node.attrs.get("axis", 1) if axis == 1 and x_rank > 1: return [cls.make_tensor_from_onnx_node(node, **kwargs)] if axis == 0: cal_shape = (1, -1) else: cal_shape = (tf.reduce_prod(shape[0:axis]), tf.reduce_prod(shape[axis:tf.size(shape)])) return [tf.reshape(x, cal_shape)] @classmethod def version_1(cls, node, **kwargs): return cls._common(node, **kwargs) @classmethod def version_9(cls, node, **kwargs): return cls._common(node, **kwargs) @classmethod def version_11(cls, node, **kwargs): return cls._common(node, **kwargs)