G06N3/0455

Methods, systems, and computer readable media for mask embedding for realistic high-resolution image synthesis
11580673 · 2023-02-14 · ·

The subject matter described herein includes methods, systems, and computer readable media for mask embedding for realistic high-resolution image synthesis. According to one method for mask embedding for realistic high-resolution image synthesis includes receiving, as input, a mask embedding vector and a latent features vector, wherein the mask embedding vector acts as a semantic constraint; generating, using a trained image synthesis algorithm and the input, a realistic image, wherein the realistic image is constrained by the mask embedding vector; and outputting, by the trained image synthesis algorithm, the realistic image to a display or a storage device.

Deep learning based methods and systems for nucleic acid sequencing

Methods and systems for determining a plurality of sequences of nucleic acid (e.g., DNA) molecules in a sequencing-by-synthesis process are provided. In one embodiment, the method comprises obtaining images of fluorescent signals obtained in a plurality of synthesis cycles. The images of fluorescent signals are associated with a plurality of different fluorescence channels. The method further comprises preprocessing the images of fluorescent signals to obtain processed images. Based on a set of the processed images, the method further comprises detecting center positions of clusters of the fluorescent signals using a trained convolutional neural network (CNN) and extracting, based on the center positions of the clusters of fluorescent signals, features from the set of the processed images to generate feature embedding vectors. The method further comprises determining, in parallel, the plurality of sequences of DNA molecules using the extracted features based on a trained attention-based neural network.

Detecting system events based on user sentiment in social media messages

Methods and systems are disclosed herein for using anomaly detection in timeseries data of user sentiment to detect incidents in computing systems and identify events within an enterprise. An anomaly detection system may receive social media messages that include a timestamp indicating when each message was published. The system may generate sentiment identifiers for the social media messages. The sentiment identifiers and timestamps associated with the social media messages may be used to generate a timeseries dataset for each type of sentiment identifier. The timeseries datasets may be input into an anomaly detection model to determine whether an anomaly has occurred. The system may retrieve textual data from the social media messages associated with the detected anomaly and may use the text to determine a computing system or event associated with the detected anomaly.

Medical image segmentation method based on U-Net

A medical image segmentation method based on a U-Net, including: sending real segmentation image and original image to a generative adversarial network for data enhancement to generate a composite image with a label; then putting the composite image into original data set to obtain an expanded data set, and sending the expanded data set to improved multi-feature fusion segmentation network for training. A Dilated Convolution Module is added between the shallow and deep feature skip connections of the segmentation network to obtain receptive fields with different sizes, which enhances the fusion of detail information and deep semantics, improves the adaptability to the size of the segmentation target, and improves the medical image segmentation accuracy. The over-fitting problem that occurs when training the segmentation network is alleviated by using the expanded data set of the generative adversarial network.

ANOMALY DETECTION APPARATUS, ANOMALY DETECTION METHOD AND PROGRAM
20230039740 · 2023-02-09 ·

An anomaly detection apparatus includes an anomaly detection unit configured to perform anomaly detection on time series data. The anomaly detection unit includes an encoding unit configured to encode the time series data by using a plurality of LSTM cells, an attention layer configured to calculate a weight of attention on an output from the encoding unit, a context generation unit configured to generate a context vector by applying the weight to the output from the encoding unit, and a decoding unit configured to reconfigure the time series data by using the plurality of LSTM cells in accordance with the context vector, and thereby, enables improvement in accuracy for the anomaly detection and efficient learning.

ANOMALY DETECTION USING USER BEHAVIORAL BIOMETRICS PROFILING METHOD AND APPARATUS

Techniques for determining anomalous user behavior in connection with an online application are disclosed. In one embodiment, a method is disclosed comprising obtaining user behavior data in connection with a user of an application, generating feature data using the obtained user behavior data, obtaining one or more user behavior anomaly predictions from one or more anomaly prediction models trained to output a user behavior anomaly prediction in response to the feature data. Each user behavior anomaly prediction indicates a probability that the user behavior is anomalous. A user behavior anomaly determination is made using the user behavior anomaly prediction(s).

SELF-SUPERVISED LEARNING WITH MODEL AUGMENTATION
20230042327 · 2023-02-09 ·

A method for providing a neural network system includes performing contrastive learning to the neural network system to generate a trained neural network system. The performing the contrastive learning includes performing first model augmentation to a first encoder of the neural network system to generate a first embedding of a sample, performing second model augmentation to the first encoder to generate a second embedding of the sample, and optimizing the first encoder using a contrastive loss based on the first embedding and the second embedding. The trained neural network system is provided to perform a task.

Systems and Methods for Detecting Novel Behaviors Using Model Sharing
20230044470 · 2023-02-09 ·

According to an example, an autonomous normal and novel behavior sharing apparatus may receive one or more novel behavior baseline models and one or more normal behavior baseline models from a first entity for sharing with a second entity and a subset of other entities; share the received models with the second entity and a subset of other entities; receive one or more novel behavior baseline models and one or more normal behavior baseline models from other entities for sharing with the first entity and a subset of other entities; share the received models with the first entity and subset of other entities; receive effectiveness factor of the shared models from the entities that received these models; score the models based on effectiveness factor received from a plurality of entities; prioritize sharing of the models based on their score.

MARGIN ASSESSMENT METHOD
20230044111 · 2023-02-09 ·

A margin assessment method is provided. Under cooperation of harmonic generation microscopy (HGM) and a deep learning method, the margin assessment method can instantaneously and digitally determine whether a 3D image group generated by an HGM imaging system is a malignant tumor or the surrounding normal skin, so as to assist in determining margins of a lesion.

DEFECT DETECTION IN A POINT CLOUD
20230044371 · 2023-02-09 ·

Examples described herein provide a method that includes performing a first scan of an object to generate first scan data. The method further includes detecting a defect on a surface of the object by analyzing the first scan data to identify a region of interest containing the defect by comparing the first scan data to reference scan data. The method further includes performing a second scan of the region of interest containing the defect to generate second scan data, the second scan data being higher resolution scan data than the first scan data. The method further includes combining the first scan data and the second scan data to generate a point cloud of the object.