Internet porn image detection method based on deep convolution nerve network

A convolutional neural network and image detection technology, which is applied in the field of image recognition and computer vision, can solve problems such as low image proportion, similar images cannot be retrieved from a pornographic image, and difficulty in visual bag of words, etc.

Inactive Publication Date: 2015-10-21
ANHUI UNIVERSITY
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Problems solved by technology

[0005] Disadvantages: (1) Many images are not pornographic images even if there are more skin areas (such as images containing characters in bikinis, such as figure 1 (a));
[0006] (2) The proportion of the skin color area in some pornographic images is not high in the whole image (some pornographic images only expose pornographic parts);
[0010] Disadvantages: (1) Which type of image to choose to build the image database to be retrieved has a great impact on the final effect (both pornographic images and normal images have a large number of styles, it is impossible to select limited images to represent all types, and there will often be some A pornographic image cannot retrieve a very similar image in the image database);
[0011] (2) It is very difficult to select which features to compare the similarity between two images (weak features will bring a lot of misjudgments, and strong features will cause similar pictures to be retrieved)
[0014] Disadvantages: (1) The skin color detection model is also us

Method used

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  • Internet porn image detection method based on deep convolution nerve network
  • Internet porn image detection method based on deep convolution nerve network
  • Internet porn image detection method based on deep convolution nerve network

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Embodiment Construction

[0041] The present invention will now be further described in conjunction with specific examples, and the following examples are intended to illustrate the present invention rather than further limit the present invention.

[0042] 1. Acquisition and enhancement of effective training image data

[0043] (1) Obtain 3,300 pornographic images and 5,300 normal images by manual calibration, and divide these images into four image sets: training set (1500 pornographic images, 3500 normal images), auxiliary training set (800 pornographic images, 800 Zhang normal), validation set (500 pornographic, 500 normal), test set (500 pornographic, 500 normal);

[0044] (2) Perform effective training area acquisition and data enhancement on the two image sets of the training set and the auxiliary training set

[0045] 1) Effective training area acquisition (such as image 3 (a) shown)

[0046] A. Scale the short side of these pictures to 227 pixels, and the other side changes according to th...

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Abstract

The invention relates to an Internet porn image detection method based on a deep convolution nerve network. The method comprises the following steps of acquiring a porn image and a normal image through a manual calibration method and carrying out pretreatment and enhancement on the images so as to acquire an effective square training image; sending the acquired effective image into a deep convolution nerve network so as to train the network; verifying a network model on a verification set, adjusting a training set according to a result and continuously training the deep convolution nerve network; repeating the last step till that detection accuracy on the verification set reach an expected object or a network loss function begins convergent; testing the trained network on the training set. The method in the invention has the following advantages that the porn image detection method based on the deep convolution nerve network is provided and the method can be used to rapidly detect almost all the types of porn images through a single model; in an actual test, detection accuracy in the invention reaches above 98.6%.

Description

technical field [0001] The invention belongs to the fields of computer vision and image recognition, and relates to a network pornographic image detection method based on a deep convolutional neural network. Background technique [0002] Existing specific methods for accurately and quickly detecting pornographic images from massive network images are as follows: [0003] The first pornographic image detection method based on skin color statistics [0004] Solution: Use the skin color detection model (based on different color space color features or texture features, and use Gaussian mixture model to judge whether a pixel is skin) to detect the skin color area in the image, and judge according to the ratio of the skin color area to the total image area Whether the image is pornographic. [0005] Disadvantages: (1) Many images are not pornographic images even if there are more skin areas (such as images containing characters in bikinis, such as figure 1 (a)); [0006] (2) ...

Claims

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Application Information

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IPC IPC(8): G06K9/62G06K9/66
CPCG06V30/194G06F18/24
Inventor 李腾年福东王妍
Owner ANHUI UNIVERSITY
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