Patent classifications
G06V10/36
PART INSPECTION SYSTEM HAVING GENERATIVE TRAINING MODEL
A part inspection system includes a vision device configured to image a part being inspected and generate a digital image of the part. The system includes a part inspection module communicatively coupled to the vision device and receives the digital image of the part as an input image. The part inspection module includes a defect detection model. The defect detection model includes a template image. The defect detection model compares the input image to the template image to identify defects. The defect detection model generates an output image. The defect detection model configured to overlay defect identifiers on the output image at the identified defect locations, if any.
PART INSPECTION SYSTEM HAVING GENERATIVE TRAINING MODEL
A part inspection system includes a vision device configured to image a part being inspected and generate a digital image of the part. The system includes a part inspection module communicatively coupled to the vision device and receives the digital image of the part as an input image. The part inspection module includes a defect detection model. The defect detection model includes a template image. The defect detection model compares the input image to the template image to identify defects. The defect detection model generates an output image. The defect detection model configured to overlay defect identifiers on the output image at the identified defect locations, if any.
Clustering algorithm-based multi-parameter cumulative calculation method for lower limb vascular calcification indexes
The present invention discloses a clustering algorithm-based multi-parameter cumulative calculation method for lower limb vascular calcification indexes, including the following steps: firstly carrying out super-pixel segmentation of a CT image, and enabling calcified spots in the CT image to be segmented in each super-pixel region; after the super-pixel segmentation is accomplished, extracting a brightness characteristic value of a super-pixel region where the calcified spots are located by using a Lab color space, and performing edge detection and contour extraction on the calcified spots in the image; and after edge detection and contour extraction, fitting the calcified spots in the image by using a segmented ellipse, and extracting the area of the calcified spots after optimizing an ellipse contour.
Clustering algorithm-based multi-parameter cumulative calculation method for lower limb vascular calcification indexes
The present invention discloses a clustering algorithm-based multi-parameter cumulative calculation method for lower limb vascular calcification indexes, including the following steps: firstly carrying out super-pixel segmentation of a CT image, and enabling calcified spots in the CT image to be segmented in each super-pixel region; after the super-pixel segmentation is accomplished, extracting a brightness characteristic value of a super-pixel region where the calcified spots are located by using a Lab color space, and performing edge detection and contour extraction on the calcified spots in the image; and after edge detection and contour extraction, fitting the calcified spots in the image by using a segmented ellipse, and extracting the area of the calcified spots after optimizing an ellipse contour.
Method for acquiring object information and apparatus for performing same
The present invention relates to a method for acquiring an object information, the method comprising: obtaining an input image acquired by capturing a sea; obtaining a noise level of the input image; when the noise level indicates a noise lower than a predetermined level, acquiring an object information related to an obstacle included in the input image from the input image by using a first artificial neural network, and when the noise level indicates a noise higher than the predetermined level, obtaining a noise-reduced image of which the environmental noise is reduced from the input image by using a second artificial neural network, and acquiring an object information related to an obstacle included in the sea from the noise-reduced image by using the first artificial neural network.
Dynamically configured extraction, preprocessing, and publishing of a region of interest that is a subset of streaming video data
A method of preprocessing incoming video data of at least one region of interest from a camera collecting video data having a first field of view is disclosed herein that includes receiving the incoming video data from the camera; preprocessing the incoming video data, by a computer processor, according to preprocessing parameters defined within a runtime configuration file, with the preprocessing including formatting the incoming video data to create first video data of a first region of interest with a second field of view that is less than the first field of view; and publishing the first video data of the first region of interest to an endpoint to allow access by a first subscriber.
Dynamically configured extraction, preprocessing, and publishing of a region of interest that is a subset of streaming video data
A method of preprocessing incoming video data of at least one region of interest from a camera collecting video data having a first field of view is disclosed herein that includes receiving the incoming video data from the camera; preprocessing the incoming video data, by a computer processor, according to preprocessing parameters defined within a runtime configuration file, with the preprocessing including formatting the incoming video data to create first video data of a first region of interest with a second field of view that is less than the first field of view; and publishing the first video data of the first region of interest to an endpoint to allow access by a first subscriber.
DRIVER ATTENTION AREA PREDICTION SYSTEM
A driver attention area prediction method includes: S1, acquiring an original driving video of a driver attention area and preprocessing the original driving video, thereby obtaining a processed driving video sequence; S2, constructing a deep learning model through a deep learning keras framework and training the deep learning model to obtain a trained deep learning model; S3, performing area prediction on the processed driving video sequence through the trained deep learning model, thereby obtaining a driver attention area prediction result; and S4, outputting the driver attention area prediction result. Moreover, a driver attention area prediction system includes a driving video acquisition and preprocessing module, a model training module, a model application module and a result output module. Differentiated training can be carried out on driving attentions in LHT and RHT scenes, and driving attentions can be accurately predicted as per scenes and conditions.
DRIVER ATTENTION AREA PREDICTION SYSTEM
A driver attention area prediction method includes: S1, acquiring an original driving video of a driver attention area and preprocessing the original driving video, thereby obtaining a processed driving video sequence; S2, constructing a deep learning model through a deep learning keras framework and training the deep learning model to obtain a trained deep learning model; S3, performing area prediction on the processed driving video sequence through the trained deep learning model, thereby obtaining a driver attention area prediction result; and S4, outputting the driver attention area prediction result. Moreover, a driver attention area prediction system includes a driving video acquisition and preprocessing module, a model training module, a model application module and a result output module. Differentiated training can be carried out on driving attentions in LHT and RHT scenes, and driving attentions can be accurately predicted as per scenes and conditions.
BODY AND HAND ASSOCIATION METHOD AND APPARATUS, DEVICE, AND STORAGE MEDIUM
A body and hand association method includes: an image to be detected of which an image content includes a body and a hand is acquired; a body bounding box of the body and a hand bounding box of the hand are determined in the image to be detected; an association probability between the body bounding box and the hand bounding box is determined; a circumscribed box of the body bounding box and the hand bounding box is determined; and a degree of association between the body and hand in the circumscribed box is determined based on a hand key point in the circumscribed box and the association probability.