Patent classifications
G06V10/7784
Monitoring devices at enterprise locations using machine-learning models to protect enterprise-managed information and resources
Aspects of the disclosure relate to monitoring devices at enterprise locations using machine-learning models to protect enterprise-managed information and resources. In some embodiments, a computing platform may receive, from one or more data source computer systems, passive monitoring data. Based on applying a machine-learning classification model to the passive monitoring data received from the one or more data source computer systems, the computing platform may determine to trigger a data capture process at an enterprise center. In response to determining to trigger the data capture process, the computing platform may initiate an active monitoring process to capture event data at the enterprise center. Thereafter, the computing platform may generate one or more alert messages based on the event data captured at the enterprise center. Then, the computing platform may send the one or more alert messages to one or more enterprise computer systems.
Learning template representation libraries
Methods, systems, and apparatus, including computer programs encoded on a computer storage medium, for learning template representation libraries. In one aspect, a method includes obtaining an image depicting a physical environment, where the environment includes a given physical object. When possible, a position of the given object in the environment is inferred based on a template representation library using template matching techniques. In response to determining that the position of the given object in the environment cannot be inferred based on the template representation library using template matching techniques, the template representation library is automatically augmented with new template representations.
RECOGNITION METHOD, APPARATUS, AND DEVICE, AND STORAGE MEDIUM
An image recognition method includes: obtaining an image; extracting a target image region corresponding to a target part from the image, wherein the target image region includes a target object; determining a location of the target object in the target image region (i) according to pixel values of pixels in the target image region and a location relationship between the pixels, or (ii) inputting the target image region to a trained segmentation model to obtain the location of the target object in the target image region; and displaying a recognition result of the image, wherein the recognition result indicates the location of the target object in the target image region.
Method and Computing Device in which Visual and Non-Visual Semantic Attributes are Associated with a Visual
The present invention provides a method in which visual and non-visual semantic attributes are associated with a visual comprising preferably an input step, a preliminary visual processing step, a semantic concept processing step, a semantic context processing step, a semantic marker processing step, a semantic inheritance processing step, a semantic instance processing step, and a lexical functions step, as well as a computing device which is capable of performing said method.
SEMI-SUPERVISED LEARNING WITH GROUP CONSTRAINTS
A computer-implemented method for classification of data by a machine learning system using a logic constraint for reducing a data labeling requirement. The computer-implemented method includes: generating a first embedding space from a first partially labeled training data set, wherein in the first embedding space, content-wise related training data of the first partially labeled training data are clustered together, determining at least two clusters in the first embedding space formed from the first partially labeled training data, and training a machine learning model based, at least in part, on a second partially labeled training data set and the at least two clusters, wherein the at least two clusters are used as training constraints.
ITERATIVE MEDIA OBJECT COMPRESSION ALGORITHM OPTIMIZATION USING DECOUPLED CALIBRATION OF PERCEPTUAL QUALITY ALGORITHMS
One or more multi-stage optimization iterations are performed with respect to a compression algorithm. A given iteration comprises a first stage in which hyper-parameters of a perceptual quality algorithm are tuned independently of the compression algorithm. A second stage of the iteration comprises tuning hyper-parameters of the compression algorithm using a set of perceptual quality scores generated by the tuned perceptual quality algorithm. The final stage of the iteration comprises performing a compression quality evaluation test on the tuned compression algorithm.
IDENTIFICATION INFORMATION ASSIGNMENT APPARATUS, IDENTIFICATION INFORMATION ASSIGNMENT METHOD, AND PROGRAM
It reduces labor and time to generate training data for the training model. An identification information assignment apparatus includes an acquirer configured to acquire a plurality of pieces of image data, an assigner configured to assign identification information to image data selected from the plurality of pieces of image data by using a learning model after learning, and an updater configured to update the learned model using the image data to which the identification information is assigned, wherein the assigner assigns identification information to a rest of the image data acquired by the acquirer using the learned model that has been updated.
Information processing apparatus and recording medium
An information processing apparatus includes a hardware processor which (i) performs learning by a learning data set associated with a correct answer label for a preset problem and creates a machine learning model for estimating a correct answer to the preset problem for input data, (ii) estimates the correct answer to the preset problem for the input data by using the machine learning model, (iii) in response to a user operation, determines a label indicating a result of the estimation as a correct answer label of the input data or corrects the label to determine the corrected label as a correct answer label of the input data, and (iv) additionally registers the determined correct answer label as learning data in association with the input data in the learning data set.
Video-based 3D hand pose and mesh estimation based on temporal-aware self-supervised learning
A method, computer program, and computer system is provided for estimating three-dimensional hand poses in images. Data corresponding to two hand images is receive, and an optical flow value corresponding to a change in a hand gesture in the received hand image data is calculate. A heat map is generated based on the calculated optical flow, and a hand mesh map is estimated based on the generated heat map. A hand pose present within the hand images is determined based on the estimated hand mesh map.
ESTIMATION APPARATUS, LEARNING APPARATUS, ESTIMATION METHOD, LEARNING METHOD, AND PROGRAM
An estimation apparatus, a learning apparatus, an estimation method, and a learning method, and a program capable of accurate body tracking without attaching many trackers to a user are provided. A feature extraction section (68) outputs feature data indicating a feature of a time-series transition until a latest timing in response to an input of input data that contains region data indicating a position, a posture, or a motion about a region of a body at the latest timing and feature data indicating the feature of the time-series transition previously output from the feature extraction section (68) at a timing preceding the latest timing. An estimation section (72) estimates a position, a posture, or a motion of another region of a body closer to a center of the body than the region at the latest timing on the basis of the feature data indicating the feature of the time-series transition until the latest timing.