Patent classifications
G06V10/426
Data-driven requirements analysis and matching
Techniques for data-driven requirements analysis and matching are described, including receiving an input from a notification service over a data network, the input including data indicating a requirement used to manufacture, procure, or distribute an item, the requirement being generated by an application configured to identify an attribute of the item, querying an endpoint in response to the input, the input indicating a machine capable of manufacturing the item, transforming the input, the data, and a result to a data format using a logic module of the platform to generate match data identifying a supplier capable of manufacturing at least a portion of the item, ranking the match data, and changing the match data from the data format to another format used to render a display of resultant data from the match data presented on a display.
Data-driven requirements analysis and matching
Techniques for data-driven requirements analysis and matching are described, including receiving an input from a notification service over a data network, the input including data indicating a requirement used to manufacture, procure, or distribute an item, the requirement being generated by an application configured to identify an attribute of the item, querying an endpoint in response to the input, the input indicating a machine capable of manufacturing the item, transforming the input, the data, and a result to a data format using a logic module of the platform to generate match data identifying a supplier capable of manufacturing at least a portion of the item, ranking the match data, and changing the match data from the data format to another format used to render a display of resultant data from the match data presented on a display.
SCENE GRAPHS FOR VIDEO SCENE UNDERSTANDING AND INFORMATION RETRIEVAL
In various examples, generating and using interaction graphs for video information retrieval systems and applications is described herein. Systems and methods are disclosed that process videos generated using one or more image sensors in order to generate a graph that represents at least interactions between entities depicted by the videos. For instance, nodes of the graph may be associated with the entitiessuch as people and/or other objectsas well as attributes associated with the entities. Additionally, edges of the graph may be associated with interactions between the entities, times that the interactions occurred, and/or indications of which videos depict the interactions. Systems and methods are then further disclosed that use the graph to perform information retrieval associated with the videos. For instance, the graph may be used to identify relevant information associated with a query, where the information may then be used to generate a response.
SCENE GRAPHS FOR VIDEO SCENE UNDERSTANDING AND INFORMATION RETRIEVAL
In various examples, generating and using interaction graphs for video information retrieval systems and applications is described herein. Systems and methods are disclosed that process videos generated using one or more image sensors in order to generate a graph that represents at least interactions between entities depicted by the videos. For instance, nodes of the graph may be associated with the entitiessuch as people and/or other objectsas well as attributes associated with the entities. Additionally, edges of the graph may be associated with interactions between the entities, times that the interactions occurred, and/or indications of which videos depict the interactions. Systems and methods are then further disclosed that use the graph to perform information retrieval associated with the videos. For instance, the graph may be used to identify relevant information associated with a query, where the information may then be used to generate a response.
Methods and apparatus for analyzing pathology patterns of whole-slide images based on graph deep learning
The present invention relates to a method and apparatus for analyzing pathology patterns of whole-slide images based on graph deep learning, which may include: a whole-slide image (WSI) compression step of compressing WSI into a superpatch graph; a graph neural networks (GNN) analysis step of embedding node features and context features into the superpatch graph through a GNN model and calculating contributions for each node and edge; a biomarker acquisition step of classifying and grouping the superpatch graph according to the contributions for each node, connecting the classified and grouped superpatch graph in units of groups to generate connected graphs, normalizing and clustering features of the connected graphs, and acquiring environmental graph biomarkers for each group; and a diagnostic information extraction step of extracting and providing diagnostic information on the WSI based on the environmental graph biomarker for each group.
Methods and apparatus for analyzing pathology patterns of whole-slide images based on graph deep learning
The present invention relates to a method and apparatus for analyzing pathology patterns of whole-slide images based on graph deep learning, which may include: a whole-slide image (WSI) compression step of compressing WSI into a superpatch graph; a graph neural networks (GNN) analysis step of embedding node features and context features into the superpatch graph through a GNN model and calculating contributions for each node and edge; a biomarker acquisition step of classifying and grouping the superpatch graph according to the contributions for each node, connecting the classified and grouped superpatch graph in units of groups to generate connected graphs, normalizing and clustering features of the connected graphs, and acquiring environmental graph biomarkers for each group; and a diagnostic information extraction step of extracting and providing diagnostic information on the WSI based on the environmental graph biomarker for each group.
DISTRIBUTION TRANSFORMATION FOR SYNTHETIC SCENE GENERATION
In various examples, a generative model is used to synthesize datasets for use in training a downstream machine learning model to perform an associated task. The synthesized datasets may be generated by sampling a scene graph from a scene grammarsuch as a probabilistic grammarand applying the scene graph to the generative model to compute updated scene graphs more representative of object attribute distributions of real-world datasets. The downstream machine learning model may be validated against a real-world validation dataset, and the performance of the model on the real-world validation dataset may be used as an additional factor in further training or fine-tuning the generative model for generating the synthesized datasets specific to the task of the downstream machine learning model.
DISTRIBUTION TRANSFORMATION FOR SYNTHETIC SCENE GENERATION
In various examples, a generative model is used to synthesize datasets for use in training a downstream machine learning model to perform an associated task. The synthesized datasets may be generated by sampling a scene graph from a scene grammarsuch as a probabilistic grammarand applying the scene graph to the generative model to compute updated scene graphs more representative of object attribute distributions of real-world datasets. The downstream machine learning model may be validated against a real-world validation dataset, and the performance of the model on the real-world validation dataset may be used as an additional factor in further training or fine-tuning the generative model for generating the synthesized datasets specific to the task of the downstream machine learning model.
Classifying Images of Dose-Response Graphs
A computer-implemented method of classifying images comprising dose-response graphs obtained from dose-response experiments. The method comprises receiving, at a curve shape classifier model, an input comprising image data including a plurality of pixels, wherein the image data represents an image of a dose-response graph indicating a relationship between the concentration of a compound and its activity. The curve shape classifier model comprises a neural network model configured for classifying images of dose-response graphs into a plurality of dose-response graph categories relating to curve shape. The method further comprises generating, using the neural network model, a classification output for the image represented by the received image data, said generating comprising processing the image data using one or more layers of the neural network model in accordance with parameters associated with the one or more layers.
Classifying Images of Dose-Response Graphs
A computer-implemented method of classifying images comprising dose-response graphs obtained from dose-response experiments. The method comprises receiving, at a curve shape classifier model, an input comprising image data including a plurality of pixels, wherein the image data represents an image of a dose-response graph indicating a relationship between the concentration of a compound and its activity. The curve shape classifier model comprises a neural network model configured for classifying images of dose-response graphs into a plurality of dose-response graph categories relating to curve shape. The method further comprises generating, using the neural network model, a classification output for the image represented by the received image data, said generating comprising processing the image data using one or more layers of the neural network model in accordance with parameters associated with the one or more layers.