Patent classifications
G06N3/0464
METHOD FOR REALIZING A MULTI-CHANNEL CONVOLUTIONAL RECURRENT NEURAL NETWORK EEG EMOTION RECOGNITION MODEL USING TRANSFER LEARNING
The invention provides a method for realizing a multi-channel convolutional recurrent neural network EEG emotion recognition model using transfer learning, the method uses a dual-channel one-dimensional convolutional neural network model constructed based on three heartbeats recognition method as the source domain model for transferring, to obtain a multi-channel convolutional recurrent neural network EEG emotion recognition model with EEG signal as the target domain, it solves the problem of scarcity of EEG labeling data, and can improve the accuracy of EEG emotion prediction. The accuracy of data processing is improved by decomposing and normalizing the EEG data set; the transferred multi-channel convolutional neural network extracts the features of multi-channel EEG signals in EEG data set; combined with the recurrent neural network, sequence modeling is carried out to extract multi-channel fused emotional information; the feature redistribution is realized by adaptive attention model and weighted feature fusion, and the complete feature tensor is obtained.
METHOD, ELECTRONIC DEVICE AND STORAGE MEDIUM FOR REMOTE DAMAGE ASSESSMENT OF VEHICLE
A method for remote damage assessment of a vehicle is provided. The present disclosure relates to the technical field of artificial intelligence, in particular to the technical field of image and text recognition. An implementation solution is: performing data collection on a target vehicle to determine damage information of the target vehicle; obtaining call content of an insurance claiming call for the target vehicle, and extracting accident-related information from the call content, wherein the accident-related information includes named entities in the call content and a relationship between the named entities; and determining a first fraud probability corresponding to the target vehicle at least based on the damage information and the accident-related information.
METHOD FOR TRAINING MODEL, DEVICE, AND STORAGE MEDIUM
A method for training a model includes: obtaining a scene image, second actual characters in the scene image and a second construct image; obtaining first features and first recognition characters of characters obtained by performing character recognition on the scene image using the model to be trained; obtaining second features of characters obtained by performing character recognition on the second construct image using the training auxiliary model; and obtaining a character recognition model by adjusting model parameters of the model to be trained based on the first recognition characters, the second actual characters, the first features and the second features.
PROVIDING A PREDICTION OF A RADIUS OF A MOTORCYCLE TURN
A method for providing a prediction of a radius of a motorcycle turn, the method may include determining that the motorcycle is about to turn; predicting values of multiple radius of turn impacting (RTI) parameters; wherein the multiple RTI parameters are selected out of a group of parameters, wherein the selection was made during a machine learning training process, and the group of parameters comprises motorcycle kinematic parameters; determining, based on the determined values of the multiple RTI parameters, the estimated radius of the motorcycle turn; and performing a driving related operation based on the estimated radius of the motorcycle turn.
Scene-Adaptive Radar
In an embodiment, a method includes: receiving first radar data from a millimeter-wave radar sensor; receiving a set of hyperparameters with a radar processing chain; generating a first radar processing output using the radar processing chain based on the first radar data and the set of hyperparameters; updating the set of hyperparameters based on the first radar processing output using a hyperparameter selection neural network; receiving second radar data from the millimeter-wave radar sensor; and generating a second radar processing output using the radar processing chain based on the second radar data and the updated set of hyperparameters.
RAY CLUSTERING LEARNING METHOD BASED ON WEAKLY-SUPERVISED LEARNING FOR DENOISING THROUGH RAY TRACING
Disclosed is a ray clustering learning method based on weakly-supervised learning for denoising using ray tracing. The ray clustering learning method is for learning a denoising model for removing noise from a rendered image through ray tracing, and includes extracting a feature of a simulated ray through the ray tracing and clustering the ray through contrastive learning for the feature.
NON-FUNGIBLE TOKEN AUTHENTICATION
Disclosed are systems and methods that authenticate non-fungible tokens (“NFT”) and/or digital data represented by or pointed to by an NFT. In some implementations, authentication may be with respect to an existing NFT. In other implementations, authentication may be with respect to an NFT that is being created. The disclosed implementations may compare a candidate and/or candidate NFT data with existing NFTs and/or existing NFT data to determine if the candidate NFT and/or candidate NFT data is similar to other NFTs and/or other NFT data of another NFT, which may exist on any of many different blockchains.
GRAPH DATA PROCESSING METHOD, DEVICE, AND COMPUTER PROGRAM PRODUCT
A method for graph data processing comprises obtaining graph data which includes a plurality of nodes and data corresponding to the plurality of nodes respectively; classifying the plurality of nodes into at least one category of a plurality of categories, wherein the plurality of categories are associated with a plurality of node relationship patterns; determining, from a plurality of candidate parameter value sets of a graph convolutional network (GCN) model, parameter value subsets respectively matching at least one category, wherein the plurality of candidate parameter value sets are determined by training the GCN model respectively for the plurality of node relationship patterns; and using the parameter value subsets respectively matching the at least one category to respectively perform a graph convolution operation in the GCN model on data corresponding to the nodes classified into the at least one category to obtain a processing result for the graph data.
FAT SUPPRESSION USING NEURAL NETWORKS
In a method for determining a fat-reduced MR image, a first MR image is provided having, apart from the other tissue constituents, MR signals from only one of the two fat constituents, the first MR image is applied to a trained ANN, which was trained by first MR training data as the input data, the training data including, apart from the other tissue constituents, MR signals from only the one of the two fat constituents, and using second MR training data as a base knowledge, the second MR training data including, apart from the other tissue constituents, no MR signals from the two fat constituents; and an MR output image is determined from the trained ANN, to which the first MR image was applied, as a fat-reduced MR image, wherein the fat-reduced MR image includes, apart from the other tissue constituents, no MR signals from the two fat constituents.
TRAINING A NEURAL NETWORK USING A DATA SET WITH LABELS OF MULTIPLE GRANULARITIES
This disclosure describes systems and methods for training a neural network with a training data set including data items labeled at different granularities. During training, each item within the training data set can be fed through the neural network. For items with labels of a higher granularity, weights of the network can be adjusted based on a comparison between the output of the network and the label of the item. For items with labels of a lower granularity, an output of the network can be fed through a conversion function that convers the output from the higher granularity to the lower granularity. The weights of the network can then be adjusted based on a comparison between the converted output and the label of the item.