Image editing method, network training method, related device and electronic equipment
An image editing and image technology, applied in image data processing, graphic image conversion, neural learning methods, etc., can solve the problem of image artifacts, distortion, etc., and achieve the effect of improving the output image quality
- Summary
- Abstract
- Description
- Claims
- Application Information
AI Technical Summary
Problems solved by technology
Method used
Image
Examples
no. 1 example
[0037] like figure 1 As shown, the present application provides an image editing method, comprising the following steps:
[0038] Step S101: Acquire a first image.
[0039] In this embodiment, the image editing method relates to the field of artificial intelligence, specifically to the field of computer vision technology and deep learning technology, which can be applied to electronic equipment, and the electronic equipment can be a server or a terminal, which is not specifically limited here.
[0040] The first image may be an image collected in real time, may also be a pre-stored image, may also be a picture sent by other devices, or may also be a picture obtained from a network.
[0041] For example, a device such as a mobile phone or a computer can be used to capture an image in real time and edit the image, or obtain an image that was previously captured and stored in the device, and edit the image, or receive an image from other devices Send an image and perform image ...
no. 2 example
[0076] like figure 2 As shown, the present application provides a network training method, comprising the following steps:
[0077] Step S201: Obtain a training sample image; wherein, the training sample image includes a training input image and a training output image, the training input image includes a first image content, and the training output image includes a second image content;
[0078] Step S202: Input the training sample image into a cycle-consistent GAN; wherein, the cycle-consistency GAN includes a first GAN and a second GAN, and the first GAN includes a second GAN A generator, the first generator includes a first spontaneous motion module, and the first spontaneous motion module is used to transform the first image content according to a first geometric transformation relationship to generate a first target image, so The first spontaneous motion module is further configured to transform the second image content edited based on the second generative confrontati...
no. 3 example
[0113] like Figure 4 As shown, the present application provides an image editing device 400, including:
[0114] A first acquiring module 401, configured to acquire a first image;
[0115] The first input module 402 is configured to input the first image to the trained cycle consistency generation confrontation network; wherein, the cycle consistency generation confrontation network includes a first generator, and the first generator includes a second generator A spontaneous motion module, the first spontaneous motion module is used to transform the image content to be edited in the first image according to the trained first geometric transformation relationship to generate a second image, and the second image includes the transformed image content;
[0116] An output module 403, configured to output a third image based on the second image generated by the first spontaneous movement module.
[0117] Optionally, the first generator further includes a first attention module ...
PUM
Abstract
Description
Claims
Application Information
- R&D Engineer
- R&D Manager
- IP Professional
- Industry Leading Data Capabilities
- Powerful AI technology
- Patent DNA Extraction
Browse by: Latest US Patents, China's latest patents, Technical Efficacy Thesaurus, Application Domain, Technology Topic, Popular Technical Reports.
© 2024 PatSnap. All rights reserved.Legal|Privacy policy|Modern Slavery Act Transparency Statement|Sitemap|About US| Contact US: help@patsnap.com