Pooling feature map processing method, target detection method, target detection system, pooling feature map processing device and medium

A processing method and feature map technology, which is applied in the field of image recognition, can solve the problems of loss of detail information, decrease of discernibility, and reduction of the accuracy of target object recognition results, and achieve the effect of compensating for pixel loss and improving accuracy

Active Publication Date: 2019-09-20
SOUTH CHINA UNIV OF TECH
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AI Technical Summary

Problems solved by technology

[0003] The pooling algorithm is used in the execution of Faster RCNN, and the quantization operation in it will cause a certain degree of distortion in the feature map of the candidate area, resulting in loss of detail information and discernible Accuracy decreases, thereby reducing the accuracy of the recognition results of the target object

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  • Pooling feature map processing method, target detection method, target detection system, pooling feature map processing device and medium
  • Pooling feature map processing method, target detection method, target detection system, pooling feature map processing device and medium
  • Pooling feature map processing method, target detection method, target detection system, pooling feature map processing device and medium

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Embodiment Construction

[0052] In this embodiment, a pooling feature map processing method is used to process the pooling feature map obtained during the execution of the Faster RCNN algorithm. refer to figure 2 , the pooling feature map processing method includes the following steps:

[0053] S1. Perform two convolution activation processes on the pooled feature map;

[0054] S2. Perform channel splicing processing on the results of the two convolution activation processes;

[0055]S3. Outputting the maximum value of the corresponding position of each channel in the result of the channel splicing process;

[0056] S4. Perform activation processing on the output result;

[0057] S5. Perform an element-by-element multiplication calculation on the result of the activation process and the pooling feature map;

[0058] S6. Perform an element-by-element addition calculation on the result of the element-by-element multiplication calculation and the pooled feature map.

[0059] The principle of the st...

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Abstract

The invention discloses a pooling feature map processing method, an image target detection method and, a pooling feature map processing device and a medium. The pooling feature map processing method comprises the following steps: respectively carrying out convolution activation processing on a pooling feature map twice, carrying out channel splicing processing on the result of the convolution activation processing twice; and outputting the maximum value of the corresponding position of each channel in the channel splicing processing result. A; and performing activation processing on the output result, performing element-by-element multiplication calculation on the result of the activation processing and the pooling feature map, performing element-by-element addition calculation on the result of the element-by-element multiplication calculation and the pooling feature map, and the like. According to the method, the pixel value information of the important region in the pooling feature map can be amplified, so that the pixel loss generated by the Faster RCNN algorithm in the region pooling process is made up, and the target detection accuracy of the Faster RCNN algorithm is improved. The method is widely applied to the technical field of image recognition.

Description

technical field [0001] The invention relates to the technical field of image recognition, in particular to a pooling feature map processing method, a target detection method, a system, a device and a medium. Background technique [0002] In the field of image recognition technology such as face recognition and license plate monitoring, the Faster RCNN algorithm is widely used to extract the target object in the image to be processed. Faster RCNN algorithm such as figure 1 As shown, the feature extraction network T constructed by using convolutional neural networks such as ZF, VGG16 or RES101 extracts the overall feature map P from the image to be processed, and then the overall feature map P is input into the PRN network, and processed by the RPN network After generating multiple candidate regions (such as 2000), and then select some candidate regions (such as 300) through the NMS algorithm, and map the selected candidate regions to the overall feature map P to obtain the c...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/04
CPCG06V2201/07G06N3/048G06N3/045G06F18/21
Inventor 高英谢杰罗雄文
Owner SOUTH CHINA UNIV OF TECH
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