Target detection training method and system, electronic equipment and computer readable storage medium
A technology of target detection and training method, applied in the field of deep learning, can solve the problem of immaturity, and achieve the effect of improving accuracy and high detection performance
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Embodiment 1
[0059] refer to Figure 1 to Figure 5 As shown, this example discloses a specific implementation of a semi-supervised learning-based target detection training method (hereinafter referred to as the "method").
[0060] This technical method uses the Faster RCNN network structure as the most basic training framework. Faster RCNN is a network structure with very high performance and stability in the field of target detection, such as Figure 4 As shown, this method is a two-stage network structure. First, for the image to be predicted, the candidate area is extracted, that is, the area where there may be an object of interest in the network is found, and then the extracted candidate area is extracted. For the prediction of the stage, predict its category and the exact coordinate information of its location. When there is only supervised data, the network structure uses a strategy of two calculations to obtain more accurate results. In the first stage of the RPN network, the cate...
Embodiment 2
[0092] In combination with the semi-supervised learning-based target detection training method disclosed in Embodiment 1, this embodiment discloses a specific implementation example of a semi-supervised learning-based target detection training system (hereinafter referred to as "system").
[0093] refer to Image 6 As shown, the system includes:
[0094] Feature extraction module 11: perform feature extraction on the image through the backbone to obtain image features;
[0095] One-stage noise addition module 12: the image feature obtains noise feature by noise method;
[0096] RPN network optimization module 13: optimize the RPN network using a consistent regularization method according to the image features and the noise features;
[0097] proposal output module 14: the RPN network output proposals after the image features are optimized;
[0098] Two-stage noise addition module 15: the proposals obtain noise proposals through a noise method;
[0099] roi_heads network op...
Embodiment 3
[0109] to combine Figure 7 As shown, this embodiment discloses a specific implementation manner of a computer device. The computer device may comprise a processor 81 and a memory 82 storing computer program instructions.
[0110] Specifically, the processor 81 may include a central processing unit (CPU), or an Application Specific Integrated Circuit (ASIC for short), or may be configured to implement one or more integrated circuits in the embodiments of the present application.
[0111] Among them, the memory 82 may include mass storage for data or instructions. For example without limitation, the memory 82 may include a hard disk drive (Hard Disk Drive, referred to as HDD), a floppy disk drive, a solid state drive (SolidState Drive, referred to as SSD), flash memory, optical disk, magneto-optical disk, magnetic tape or universal serial bus (Universal Serial Bus, referred to as USB) drive or a combination of two or more of the above. Storage 82 may comprise removable or no...
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