The present invention relates to a
pedestrian detection method based on
deep learning and multi-feature point fusion. The
pedestrian detection method is characterized by at a training stage, firstly acquiring a
pedestrian image under an application scene, marking the head and shoulder parts of the pedestrians in the image, and then using the pedestrian samples for the model training, wherein the model training comprises two steps of 1) taking the head and shoulder images of the pedestrians as the training samples, training a dichotomy model of the head and shoulder parts of the pedestrians; 2) using the
model parameters obtained by the training in the step 1) to initialize partial parameters of a
pedestrian detection model in a transfer learning manner. The
pedestrian detection method of the present invention can overcome the problem that the pedestrians shield mutually to a certain extent, adopts a
deep learning method to extract the pedestrian features, can better overcome the actual application problem that the factors, such as the pedestrian clothing, postures, backgrounds, illumination conditions, etc., change, also can effectively overcome the problems of the pedestrian multiple postures, the pedestrian multiple scales, the pedestrian mutual shielding, etc., and enables the
pedestrian detection accuracy and robustness to be improved substantially.