Source code for fastdeploy.vision.classification.contrib.resnet

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#     http://www.apache.org/licenses/LICENSE-2.0
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from __future__ import absolute_import
import logging
from .... import FastDeployModel, ModelFormat
from .... import c_lib_wrap as C


[docs]class ResNet(FastDeployModel): def __init__(self, model_file, params_file="", runtime_option=None, model_format=ModelFormat.ONNX): """Load a image classification model exported by torchvision.ResNet. :param model_file: (str)Path of model file, e.g resnet/resnet50.onnx :param params_file: (str)Path of parameters file, if the model_fomat is ModelFormat.ONNX, this param will be ignored, can be set as empty string :param runtime_option: (fastdeploy.RuntimeOption)RuntimeOption for inference this model, if it's None, will use the default backend on CPU :param model_format: (fastdeploy.ModelForamt)Model format of the loaded model, default is ONNX """ # call super() to initialize the backend_option # the result of initialization will be saved in self._runtime_option super(ResNet, self).__init__(runtime_option) self._model = C.vision.classification.ResNet( model_file, params_file, self._runtime_option, model_format) # self.initialized shows the initialization of the model is successful or not assert self.initialized, "ResNet initialize failed." # Predict and return the inference result of "input_image".
[docs] def predict(self, input_image, topk=1): """Classify an input image :param input_image: (numpy.ndarray)The input image data, 3-D array with layout HWC, BGR format :param topk: (int)The topk result by the classify confidence score, default 1 :return: ClassifyResult """ return self._model.predict(input_image, topk)
# Implement the setter and getter method for variables @property def size(self): """ Returns the preprocess image size, default size = [224, 224]; """ return self._model.size @property def mean_vals(self): """ Returns the mean value of normlization, default mean_vals = [0.485f, 0.456f, 0.406f]; """ return self._model.mean_vals @property def std_vals(self): """ Returns the std value of normlization, default std_vals = [0.229f, 0.224f, 0.225f]; """ return self._model.std_vals @size.setter def size(self, wh): assert isinstance(wh, (list, tuple)),\ "The value to set `size` must be type of tuple or list." assert len(wh) == 2,\ "The value to set `size` must contatins 2 elements means [width, height], but now it contains {} elements.".format( len(wh)) self._model.size = wh @mean_vals.setter def mean_vals(self, value): assert isinstance( value, list), "The value to set `mean_vals` must be type of list." self._model.mean_vals = value @std_vals.setter def std_vals(self, value): assert isinstance( value, list), "The value to set `std_vals` must be type of list." self._model.std_vals = value