Face age bracket recognition method and device, computer device, and readable storage medium
A recognition method and age group technology, applied in the field of computer vision, can solve the problems of dimensionality disaster, long time to extract age group features, low time efficiency, etc., achieve time efficiency improvement, improve feature extraction problems, and reduce computational complexity Effect
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Embodiment 1
[0049] figure 1 It is a flow chart of the multi-layer stacked autoencoder model training method provided by Embodiment 1 of the present invention. The multi-layer stack autoencoder model training method is applied to a computer device. The multi-layer stacked self-encoding model training method trains a multi-layer stacked self-encoding model suitable for face age group recognition (that is, age group recognition based on face images), so as to be applied to security control, video surveillance, electronic customer relationship management, etc.
[0050] Such as figure 1 As shown, the multi-layer stacked self-encoder model training method specifically includes the following steps:
[0051] 101: Obtain face features of each face image in the training sample set.
[0052] The training sample set of the multi-layer stacked autoencoder model includes multiple age-labeled face images, and each face image is a training sample. For example, the training sample set includes 4,000 ...
Embodiment 2
[0114] figure 2 It is a flow chart of the face age group recognition method provided by Embodiment 2 of the present invention. The face age group recognition method is applied to a computer device. The face age group recognition method can be applied to occasions such as security control, video surveillance, and electronic customer relationship management. The method trains a multi-layer stacked self-encoding model, and uses the trained multi-layer stacked self-encoding model to identify the face age group of the face image to be processed.
[0115] Such as figure 2 As shown, the face age group recognition method specifically includes the following steps:
[0116] 201: Obtain a training sample set of a multi-layer stacked autoencoder model, and acquire face features of each face image in the training sample set.
[0117] Step 201 in this embodiment is consistent with step 101 in Embodiment 1. For details, please refer to the relevant description of Step 101 in Embodiment...
Embodiment 3
[0137] image 3 A structural diagram of a multi-layer stacked self-encoder model training device provided in Embodiment 3 of the present invention. The multi-layer stacked self-encoder model training device 10 is applied to a computer device. The multi-layer stacked self-encoding model training device 10 trains a multi-layer stacked self-encoding model suitable for face age group recognition (that is, age group recognition based on face images), so as to be applied to security control, video surveillance, electronic customer relationship management, etc.
[0138] Such as image 3 As shown, the multi-layer stacked autoencoder model training device 10 may include: an acquisition unit 301 , a pre-training unit 302 , an adjustment unit 303 , and a judgment unit 304 .
[0139] The obtaining unit 301 is configured to obtain the face features of each face image in the training sample set.
[0140] The training sample set of the multi-layer stacked autoencoder model includes multi...
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