Face detection model training method and device, electronic equipment and storage medium
A face detection and model training technology, applied in the field of image recognition, which can solve the problems of image inclusion, inconsistent picture quality, and inability to effectively identify face images.
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Embodiment 1
[0030] figure 2 The first embodiment of the present invention provides a flow chart of a face detection model training method. This embodiment can be applied to the case of recognizing facial images through a face detection model. The method can be performed by a face detection model training device. The The training device may be implemented in the form of hardware and / or software, and the hardware may be an electronic device, such as a mobile terminal or a PC.
[0031] Before introducing the solution of this embodiment, the one-stage detection algorithm in target detection can be introduced first. One-stage is an end-to-end target detection algorithm, which does not need to filter the target area in advance. Through the backbone network of the algorithm Directly complete the regression and classification of the target area. The main step of the algorithm is to complete the feature extraction of the detected object through the convolutional neural network, and then directly...
Embodiment 2
[0084] Figure 4 This is a flowchart of a method for training a face detection model provided in Embodiment 2 of the present invention, and this embodiment is a preferred embodiment of the foregoing embodiment. The specific implementation can refer to the technical solution of this embodiment. Wherein, the technical terms that are the same as or corresponding to the above embodiments are not repeated here.
[0085] like figure 2 As shown, the method includes:
[0086] (1) First choose a target detection network of the one-stage scheme as a training model, and then train two networks (as shown in Model 1 and Model 2) at the same time with the same structure and loss function. The initialization parameters are different.
[0087] (2) Independent training stage: model 1 and model 2 are trained independently for a period of time, model 1 is trained according to steps (1.1->1.2->1.4), and model 2 is trained according to steps (2.1->2.2->2.4), so that the two Each network mode...
Embodiment 3
[0093] Figure 5 This is a schematic structural diagram of a face detection model training apparatus provided in Embodiment 3 of the present invention. like Figure 5 As shown, the device includes:
[0094] The sample set obtaining module 310 is used to obtain a training sample set; wherein, the training sample set includes at least three types of training samples, and the at least three types include the correct face annotation type, the abnormal face annotation type, and the face unmarked type;
[0095] The initial model determination module 320 is configured to perform training processing on the first face detection model to be trained and the second face detection model to be trained based on the training set sample set, so as to obtain the first initial face detection model and the second initial face detection model; wherein, The model structures of the first face detection model to be trained and the second face detection model to be trained are the same, and the inde...
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