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Hollow recognition method and device based on neural network, storage medium and terminal

A technology of neural network and recognition method, which is applied in the fields of hollow recognition method and device, terminal and storage medium based on neural network, which can solve the problems of difficult to meet the demand, low accuracy, high cost, etc., so as to improve the recognition accuracy and improve the accuracy. Sexuality and efficiency, and the effect of reducing identification costs

Active Publication Date: 2020-09-04
SPREADTRUM COMM (SHANGHAI) CO LTD
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  • Summary
  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

However, due to the complexity of the scene and the limitation of the current dual-camera technology, the hollowing problem often occurs in portrait blur photos, that is, the background near the edge of the human body should be blurred but it does not take effect. This situation will greatly affect the image. Quality of effect, degraded user experience
[0003] In the current existing detection scheme, testers are required to manually evaluate the severity of hollowing out according to the test scenario. This method has the problems of high cost and low accuracy, and it is difficult to meet the demand

Method used

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  • Hollow recognition method and device based on neural network, storage medium and terminal
  • Hollow recognition method and device based on neural network, storage medium and terminal
  • Hollow recognition method and device based on neural network, storage medium and terminal

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Embodiment Construction

[0030]As mentioned above, the hollowing out problem often occurs in blurred portrait photos, that is, the background near the edge of the human body should be blurred but it does not take effect. To assess the severity of hollowing out, this method has the problems of high cost and low accuracy, and it is difficult to meet the needs.

[0031] The inventors of the present invention have found through research that, in the existing manual detection methods, the detection results are highly subjective, so they do not have stable repeatability, especially in some areas where the hollowing phenomenon is not obvious; and Manual detection requires a lot of manpower and time; in pictures taken in complex scenes, manual recognition often misses many small-sized or less obvious hollow areas; manual recognition is difficult to fully evaluate the degree of hollowing in a photo, and even more Quantize the output.

[0032] In the embodiment of the present invention, by dividing each hollow...

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Abstract

The invention discloses a hollow recognition method and device based on a neural network, a storage medium and a terminal, and the method comprises the steps: providing a training set and a test set,wherein the training set comprises a plurality of hollow training pictures containing hollows and a plurality of hollow-free training pictures not containing hollows, aand the test set comprises a plurality of test pictures; segmenting each hollowed-out training picture into a plurality of hollowed-out picture blocks, and segmenting each non-hollowed-out training picture into a plurality of non-hollowed-out picture blocks; training a neural network model based on the hollowed-out picture blocks and the non-hollowed-out picture blocks; performing a hollow recognition test on the test picture byusing the neural network model, wherein the neural network model comprises a convolution layer, a pooling layer, an activation layer and a 1 * N output layer. According to the invention, the identification accuracy and efficiency can be improved, and the identification cost is reduced.

Description

technical field [0001] The present invention relates to the field of image processing, in particular to a neural network-based hollowing out recognition method and device, a storage medium, and a terminal. Background technique [0002] At present, mainstream mobile phones have a portrait mode that simulates background blur. The core step is to obtain depth information through the main / sub-camera, and realize the gradient of blur through the depth of field, and finally achieve the effect of DSLR camera optical background blur. However, due to the complexity of the scene and the limitation of the current dual-camera technology, the hollowing problem often occurs in portrait blur photos, that is, the background near the edge of the human body should be blurred but it does not take effect. This situation will greatly affect the image. The quality of the effect degrades the user experience. [0003] In the current existing detection scheme, testers are required to manually evalu...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06K9/34G06N3/04G06N3/08
CPCG06N3/08G06V10/267G06N3/045G06F18/214
Inventor 王铭明杨仲唱李彤彤
Owner SPREADTRUM COMM (SHANGHAI) CO LTD
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