G06V10/24

RECEIPT CAPTURE

A method including receiving an electronic record including a scan of a physical document. A coordinate system, unique to the electronic record, is established for the scan. A first boundary, defined according to the coordinate system, is generated automatically around a first set of recognized characters in the scan. A second boundary, defined according to the coordinate system, is generated automatically around a second set of recognized characters in the scan. The first set of recognized characters are physically separated in the scan by at least a predetermined distance with respect to the coordinate system. A comparison value is generated automatically by comparing a first location of the first boundary to a second location of the second boundary, relative to the coordinate system. The first set of recognized characters is associated, in storage, with the second set of recognized characters, responsive to the comparison value satisfying a rule.

Charged Particle Beam Device
20220344124 · 2022-10-27 ·

A charged particle beam device 100 includes: an irradiation unit 110 configured to irradiate a sample S with a charged particle beam; a particle detection unit 130 configured to detect a particle caused by the irradiation of the sample with the charged particle beam; and a control unit 151 configured to generate an image of the sample based on an output from the particle detection unit, wherein the control unit 151 inputs the image of the sample S into models M1 and M2 for detecting a first structure 401 and a second structure 402, acquires a first detection result related to the first structure 401 and a second detection result related to the second structure 402 from the models M1 and M2, determines locations or regions of the first structure 401 and the second structure 402 based on the first detection result and the second detection result, and outputs an integration result image 203 representing the location or the region of the first structure 401 and the location or the region of the second structure 402.

METHOD FOR FACE LIVENESS DETECTION, ELECTRONIC DEVICE AND STORAGE MEDIUM

A method, an electronic device, and a storage medium are disclosed. The method includes: acquiring a color sequence verification code; controlling a screen of an electronic device to sequentially generate colors based on a sequence of the colors included in the color sequence verification code; controlling a camera of the electronic device to collect an image of a face of a target object in each of the colors to acquire an image sequence; performing a face liveness verification on the target object to acquire a liveness score value; acquiring difference images corresponding respectively to the colors of the images of the image sequence based on the image sequence; performing a color verification based on the color sequence verification code and the difference images; and determining a face liveness detection result of the target object based on

Propensity model based optimization

Apparatuses, systems, methods, and computer program products are presented for a propensity module based optimization. An apparatus comprises a processor and a memory that stores code executable by the processor to receive an electronic submission for a pass/fail interface, identify information from the electronic submission to suggest to a user for entering into an input field for the pass/fail interface prior to submitting the electronic submission to the pass/fail interface to reduce a likelihood that the electronic submission will be rejected at the pass/fail interface, determine the likelihood that the electronic submission will be accepted by the pass/fail interface, and submit the electronic submission to the pass/fail interface in response to the likelihood satisfying a threshold.

Propensity model based optimization

Apparatuses, systems, methods, and computer program products are presented for a propensity module based optimization. An apparatus comprises a processor and a memory that stores code executable by the processor to receive an electronic submission for a pass/fail interface, identify information from the electronic submission to suggest to a user for entering into an input field for the pass/fail interface prior to submitting the electronic submission to the pass/fail interface to reduce a likelihood that the electronic submission will be rejected at the pass/fail interface, determine the likelihood that the electronic submission will be accepted by the pass/fail interface, and submit the electronic submission to the pass/fail interface in response to the likelihood satisfying a threshold.

System and method for diagnostic and treatment

A method may include obtaining first image data relating to a region of interest (ROI) of a first subject. The first image data corresponding to a first equivalent dose level may be acquired by a first device. The method may also include obtaining a model for denoising relating to the first image data and determining second image data corresponding to an equivalent dose level higher than the first equivalent dose level based on the first image data and the model for denoising. In some embodiments, the method may further include determining information relating to the ROI of the first subject based on the second image data and ecording the information relating to the ROI of the first subject.

System and method for diagnostic and treatment

A method may include obtaining first image data relating to a region of interest (ROI) of a first subject. The first image data corresponding to a first equivalent dose level may be acquired by a first device. The method may also include obtaining a model for denoising relating to the first image data and determining second image data corresponding to an equivalent dose level higher than the first equivalent dose level based on the first image data and the model for denoising. In some embodiments, the method may further include determining information relating to the ROI of the first subject based on the second image data and ecording the information relating to the ROI of the first subject.

METHOD AND DEVICE FOR IDENTIFYING PRESENCE OF THREE-DIMENSIONAL OBJECTS USING IMAGES
20220343661 · 2022-10-27 · ·

Provided are a method and apparatus for identifying the presence of a 3D object using an image. According to the method and the apparatus, two-dimensional images are used to identify whether a 3D object exists in the images. According to the method and apparatus for identifying the presence of a 3D object by using an image, the presence of a 3D object in space can be accurately and quickly identified by using two-dimensional images, leading to higher productivity.

METHOD AND DEVICE FOR IDENTIFYING PRESENCE OF THREE-DIMENSIONAL OBJECTS USING IMAGES
20220343661 · 2022-10-27 · ·

Provided are a method and apparatus for identifying the presence of a 3D object using an image. According to the method and the apparatus, two-dimensional images are used to identify whether a 3D object exists in the images. According to the method and apparatus for identifying the presence of a 3D object by using an image, the presence of a 3D object in space can be accurately and quickly identified by using two-dimensional images, leading to higher productivity.

System for detecting surface type of object and artificial neural network-based method for detecting surface type of object
11610390 · 2023-03-21 · ·

An artificial neural network-based method for detecting a surface type of an object includes: receiving a plurality of object images, wherein a plurality of spectra of the plurality of object images are different from one another and each of the object images has one of the spectra; transforming each object image into a matrix, wherein the matrix has a channel value that represents the spectrum of the corresponding object image; and executing a deep learning program by using the matrices to build a predictive model for identifying a target surface type of the object. Accordingly, the speed of identifying the target surface type of the object is increased, further improving the product yield of the object.