G06V40/168

Generating synthetic photo-realistic images

The disclosure relates to tools and methods for creating synthetic images with photo-realistic images. The disclosed face generation technology focuses on photo-realistic results by leveraging analysis of a pool of pre-selected images based on a user selection and preferences. The tools and methods as described herein include limiting the pool of pre-selected images by one or more criteria, including, for example, but not limited to gender, age, skin color, expression, etc. The pre-selection of a more curated pool of images allows a user to include a desired set of criteria and specifications that the user would want in a generated synthetic image or images.

Tunable models for changing faces in images

Techniques are disclosed for changing the identities of faces in images. In embodiments, a tunable model for changing facial identities in images includes an encoder, a decoder, and dense layers that generate either adaptive instance normalization (AdaIN) coefficients that control the operation of convolution layers in the decoder or the values of weights within such convolution layers, allowing the model to change the identity of a face in an image based on a user selection. A separate set of dense layers may be trained to generate AdaIN coefficients for each of a number of facial identities, and the AdaIN coefficients output by different sets of dense layers can be combined to interpolate between facial identities. Alternatively, a single set of dense layers may be trained to take as input an identity vector and output AdaIN coefficients or values of weighs within convolution layers of the decoder.

FORGERY DETECTION OF FACE IMAGE

In implementations of the subject matter as described herein, there is provided a method for forgery detection of a face image. Subsequent to inputting a face image, it is detected whether a blending boundary due to the blend of different images exists in the face image, and then a corresponding grayscale image is generated based on a result of the detection, where the generated grayscale image can reveal whether the input face image is formed by blending different images. If a visible boundary corresponding to the blending boundary exists in the generated grayscale image, it indicates that the face image is a forged image; on the contrary, if the visible boundary does not exist in the generated grayscale image, it indicates that the face image is a real image.

ARTIFICIAL INTELLIGENCE-BASED IMAGE PROCESSING METHOD AND APPARATUS, COMPUTER DEVICE AND STORAGE MEDIUM
20230023585 · 2023-01-26 ·

An artificial intelligence-based image processing method implemented by a computer device is provided. The method includes: acquiring an image; performing element region detection on the image to determine an element region in the image; detecting a target element region in the image using an artificial intelligence-based technique; generating a target element envelope region by searching an envelope for the detected target element region; and fusing the element region and the target element envelope region to obtain a target element region outline.

INFORMATION PROCESSING APPARATUS, INFORMATION PROCESSING METHOD, AND NON-TRANSITORY COMPUTER READABLE MEDIUM
20230237839 · 2023-07-27 · ·

An information processing apparatus includes a controller configured to generate an avatar of a user as a 3D object based on a user image of the user. The controller is configured to acquire a new image of the user, generate an excluded image by excluding a portion from the new image, and update the avatar of the user by rendering the excluded image in overlap with at least a portion of the user image.

SYSTEM AND METHOD FOR RECONSTRUCTION OF FACES FROM ANONYMIZED MEDIA USING NEURAL NETWORK BASED STEGANOGRAPHY

A system and method for concealing and revealing a human face in media objects may include obtaining a first media object capturing an image of the face; employing a first unit to: extract, from the first media object, a set of features representing the face, and generate a second media object, by embedding the extracted features in an anonymized media object; and employing a second unit to recognize the face based on the second media object.

METHOD AND SYSTEM FOR AUTHENTICATING A USER
20230022561 · 2023-01-26 ·

A method for authenticating a user includes: an application frontend of a face recognition application, upon receipt of a face recognition request from an application backend of the face recognition application, causes a terminal device to activate a camera of the terminal device; the application frontend receives a video stream of a face of the user captured by the camera of the terminal device; the application frontend transmits the received video stream to the application backend; the application backend, upon receipt of the video stream, extracts a face characteristic of the user from the received video stream in real-time; and the application backend compares the extracted face characteristic with a stored reference face characteristic of the user and authenticates the user based on the extracted face characteristic matching the stored reference face characteristic.

BIOMETRIC DATA DISTRIBUTED MANAGEMENT SYSTEM, AND BIOMETRIC RECOGNITION METHOD USING SAME
20230026106 · 2023-01-26 · ·

A method for performing biometric recognition in a system in which biometric information is distributed and stored in a plurality of databases includes extracting biometric information of a user, generating a plurality of biometric information segments by dividing the extracted biometric information, calculating distances between pre-stored biometric information template segments for each of the plurality of databases and a corresponding one of the plurality of biometric information segments, and detecting a biometric information template matching the biometric information by using the calculated distances.

QUANTITATIVE ANALYSIS METHOD AND SYSTEM FOR ATTENTION BASED ON LINE-OF-SIGHT ESTIMATION NEURAL NETWORK

Embodiments of the present disclosure provide a quantitative method and system for attention based on a line-of-sight estimation neural network, which improves the stability and training efficiency of the line-of-sight estimation neural network. A few-sample learning method is applied to training of the line-of-sight estimation neural network, which improves generalization performance of the line-of-sight estimation neural network. A nonlinear division method for small intervals of angles of the line of sight is provided, which reduces an estimation error of the line-of-sight estimation neural network. Eye opening and closing detection is added to avoid the line-of-sight estimation error caused by an eye closing state. A method for solving a landing point of the line of sight is provided, which has high environmental adaptability and can be quickly used in actual deployment.

IDENTIFICATION APPARATUS, IDENTIFICATION METHOD, AND TRAINING METHOD
20230025814 · 2023-01-26 ·

An apparatus includes an extraction unit configured to extract an N-dimensional feature vector (N is an integer that is greater than M) in a second format including an M-dimensional feature vector (M is an integer of 2 or greater) in a first format from input data, and an identification unit configured to identify a target in the input data based on the feature vector in the first format and the feature vector in the second format.