#!/usr/bin/env python import numpy as np import cv2 as cv import os import sys import unittest from tests_common import NewOpenCVTests try: if sys.version_info[:2] < (3, 0): raise unittest.SkipTest('Python 2.x is not supported') CLASSIFICATION_MODEL_PATH = "vision/classification/squeezenet/model/squeezenet1.0-9.onnx" class test_gapi_infer(NewOpenCVTests): def find_dnn_file(self, filename): return self.find_file(filename, [os.environ.get('OPENCV_GAPI_ONNX_MODEL_PATH')], False) def test_onnx_classification(self): model_path = self.find_dnn_file(CLASSIFICATION_MODEL_PATH) if model_path is None: raise unittest.SkipTest("Missing DNN test file") in_mat = cv.imread( self.find_file("cv/dpm/cat.png", [os.environ.get('OPENCV_TEST_DATA_PATH')])) g_in = cv.GMat() g_infer_inputs = cv.GInferInputs() g_infer_inputs.setInput("data_0", g_in) g_infer_out = cv.gapi.infer("squeeze-net", g_infer_inputs) g_out = g_infer_out.at("softmaxout_1") comp = cv.GComputation(cv.GIn(g_in), cv.GOut(g_out)) net = cv.gapi.onnx.params("squeeze-net", model_path) net.cfgNormalize("data_0", False) try: out_gapi = comp.apply(cv.gin(in_mat), cv.gapi.compile_args(cv.gapi.networks(net))) except cv.error as err: if err.args[0] == "G-API has been compiled without ONNX support": raise unittest.SkipTest("G-API has been compiled without ONNX support") else: raise self.assertEqual((1, 1000, 1, 1), out_gapi.shape) except unittest.SkipTest as e: message = str(e) class TestSkip(unittest.TestCase): def setUp(self): self.skipTest('Skip tests: ' + message) def test_skip(): pass pass if __name__ == '__main__': NewOpenCVTests.bootstrap()