Emoji package generation system and method based depth learning

A deep learning and generation system technology, applied in the field of expressions, can solve problems such as lack of fun and interactivity, and achieve the effect of real-time generation and low training difficulty

Active Publication Date: 2018-08-28
北京红云智胜科技有限公司
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AI Technical Summary

Problems solved by technology

[0008] In order to solve the above-mentioned technical problems, the present invention provides a system and method for generating emoticons based on deep learning, which solves the problem that the existing portrait emoticons are recording and intercepting the expressions of a single user, and lack interest and interactivity. The generative confrontation network in the learning realizes the transplantation of expressions, allowing the user's ex

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  • Emoji package generation system and method based depth learning
  • Emoji package generation system and method based depth learning
  • Emoji package generation system and method based depth learning

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Embodiment Construction

[0065] Below, refer to the attached Figures 1 to 7 As shown, a system and method for generating emoticons based on deep learning, wherein:

[0066] An emoticon package generation system based on deep learning, comprising: 11 parts; respectively: a neural network control unit 101, a video processing module 102, a power supply module 103, a neural network training module 104, a neural network feedback module 105, and a neural network test Module 106, test result post-processing module 107, camera information processing module 108, camera unit 109, model storage module 110 and video database 111;

[0067] Further, the neural network control unit 101 is the core component of the system; the neural network control unit 101 is powered by the power supply module 103, receives the data transmitted by the video processing module 102, and controls the neural network training module 104 to perform neural network training. Network training, and receive the training result passed back by...

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Abstract

The invention relates to an emoji package generation system based depth learning. The system comprises a neural network control unit, a video processing module, a power module, a neural network training module, a neural network feedback module, a neural network test module, a test result post-processing module, a camera information processing module, a camera unit, a model storage module and a video database. The generative adversarial network (GAN) architecture is perfectly built, training difficulty is relatively low, the adversarial training method is employed by the GAN, the network does not directly replicate or average real data, so diversity of generated samples is enhanced, intelligent expression of a target portrait is realized, and generation of the above emoji package is realized in real time through automated calculation design.

Description

technical field [0001] The invention belongs to the technical field of emoticon package generation systems, in particular to a system and method for generating emoticon packs based on deep learning. The present invention utilizes face detection and face feature point marking technology to locate expressions, and uses depth Learning technology, the basis of deep learning is different from traditional image processing methods. It solves problems through computer autonomous learning, and can automatically build models according to problems. Background technique [0002] With the popularization of smart phones and the diversification of social software forms, in order to enrich the chat content and enhance the communication between users, many instant messaging software provides emoticon information, for example, many emoticon packages; users can choose various emoticons in the emoticon packages. Send information through emoticons, and express emotions and information that are d...

Claims

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Application Information

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IPC IPC(8): G06T11/00G06K9/00G06N3/04H04N5/232
CPCG06T11/00G06V40/174H04N23/611G06N3/045
Inventor 尤纪璇陈东浩
Owner 北京红云智胜科技有限公司
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