Patents by Inventor Yilin Wang

Yilin Wang has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Publication number: 20240161478
    Abstract: Disclosed are a multimodal weakly-supervised three-dimensional (3D) object detection method and system, and a device. The method includes: shooting multiple two-dimensional (2D) red, green and blue (RGB) images with a camera, acquiring ground points by a vehicle LiDAR sensor and generating a 3D frustum based on 2D box labels on each of the 2D RGB images; filtering ground points in the 3D frustum and selecting a region with most 3D points; generating a 3D pseudo-labeling bounding box of an object according to the region with the most 3D points; training a multimodal superpixel dual-branch network with the 3D pseudo-labeling bounding boxes as labels and the 2D RGB image and the 3D point cloud as inputs; and inputting a 2D RGB image of a current frame and a 3D point cloud of a current scenario to a trained multimodal superpixel dual-branch network to generate an overall 3D point cloud.
    Type: Application
    Filed: April 3, 2023
    Publication date: May 16, 2024
    Inventors: Huimin MA, Haizhuang LIU, Yilin WANG, Rongquan WANG
  • Patent number: 11983632
    Abstract: The disclosure describes one or more implementations of a neural network architecture pruning system that automatically and progressively prunes neural networks. For instance, the neural network architecture pruning system can automatically reduce the size of an untrained or previously-trained neural network without reducing the accuracy of the neural network. For example, the neural network architecture pruning system jointly trains portions of a neural network while progressively pruning redundant subsets of the neural network at each training iteration. In many instances, the neural network architecture pruning system increases the accuracy of the neural network by progressively removing excess or redundant portions (e.g., channels or layers) of the neural network. Further, by removing portions of a neural network, the neural network architecture pruning system can increase the efficiency of the neural network.
    Type: Grant
    Filed: April 28, 2023
    Date of Patent: May 14, 2024
    Assignee: Adobe Inc.
    Inventors: Shikun Liu, Zhe Lin, Yilin Wang, Jianming Zhang, Federico Perazzi
  • Publication number: 20240151514
    Abstract: A conical workpiece length measurement method is provided. Two laser displacement sensors are symmetrically arranged at opposite sides of a to-be-measured conical workpiece or a tooling loaded with the to-be-measured conical workpiece. Distance X0 from each displacement sensor to a bottom plane of the to-be-measured conical workpiece is calibrated. An elongated base plate is arranged at a tip of the to-be-measured conical workpiece, and the two displacement sensors measure their respective distances to the base plate. The total length of the to-be-measured conical workpiece is calculated as follows: X=X0+(X1+X2)/2, where X1 represents distance from one of the two displacement sensors to the base plate, and X2 represents distance from the other of the two displacement sensors to the base plate. Factors influencing the length measurement include calibration of the fixed length, measurement accuracy of the displacement sensor and a tilt error of the base plate.
    Type: Application
    Filed: January 12, 2024
    Publication date: May 9, 2024
    Inventors: Yinxiao MIAO, Xiaosan WANG, Fengju SUN, Lei YAN, Tian BAI, Qigang HUANG, Ruidong HUO, Yilin DAI, Junhong TIAN
  • Publication number: 20240117451
    Abstract: Positive reference spiked in collected sample for use in qualitatively and quantitatively detecting viral RNA.
    Type: Application
    Filed: March 10, 2021
    Publication date: April 11, 2024
    Inventors: Shuwei YANG, Liancheng HUANG, Feifei FENG, Longwen SU, Kun LIN, Can TANG, Chen LIANG, Yuanmei WANG, Yanqing CAI, Yilin PANG, Chuan SHEN, Zhixue YU
  • Publication number: 20240119555
    Abstract: The technology employs a patch-based multi-scale Transformer (300) that is usable with various imaging applications. This avoids constraints on image fixed input size and predicts the quality effectively on a native resolution image. A native resolution image (304) is transformed into a multi-scale representation (302), enabling the Transformer's self-attention mechanism to capture information on both fine-grained detailed patches and coarse-grained global patches. Spatial embedding (316) is employed to map patch positions to a fixed grid, in which patch locations at each scale are hashed to the same grid. A separate scale embedding (318) is employed to distinguish patches coming from different scales in the multiscale representation. Self-attention (508) is performed to create a final image representation. In some instances, prior to performing self-attention, the system may prepend a learnable classification token (322) to the set of input tokens.
    Type: Application
    Filed: December 4, 2023
    Publication date: April 11, 2024
    Inventors: Junjie Ke, Feng Yang, Qifei Wang, Yilin Wang, Peyman Milanfar
  • Patent number: 11935217
    Abstract: The present disclosure relates to systems, methods, and non-transitory computer readable media for accurately, efficiently, and flexibly generating harmonized digital images utilizing a self-supervised image harmonization neural network. In particular, the disclosed systems can implement, and learn parameters for, a self-supervised image harmonization neural network to extract content from one digital image (disentangled from its appearance) and appearance from another from another digital image (disentangled from its content). For example, the disclosed systems can utilize a dual data augmentation method to generate diverse triplets for parameter learning (including input digital images, reference digital images, and pseudo ground truth digital images), via cropping a digital image with perturbations using three-dimensional color lookup tables (“LUTs”).
    Type: Grant
    Filed: March 12, 2021
    Date of Patent: March 19, 2024
    Assignee: Adobe Inc.
    Inventors: He Zhang, Yifan Jiang, Yilin Wang, Jianming Zhang, Kalyan Sunkavalli, Sarah Kong, Su Chen, Sohrab Amirghodsi, Zhe Lin
  • Publication number: 20240063677
    Abstract: A motor stator, a motor, and a vehicular compressor. The motor stator includes a stator core; a first insulated end plate and a second insulated end plate mounted at opposite end surfaces of the stator core; a wire wrapping around the stator core and the first and second insulated end plates, the wire having a conducting core and an insulated outer sheath; and a wiring board mounted to an axial outer side of the first insulated end plate. The first insulated end plate includes a plurality of insulated treatment positions and the wiring board includes a plurality of casing portions through which the insulated treatment positions can be accessed for providing insulation material.
    Type: Application
    Filed: August 2, 2023
    Publication date: February 22, 2024
    Inventors: Yilin Wang, Guofu He, Zhengmao Wan
  • Patent number: 11887270
    Abstract: The technology employs a patch-based multi-scale Transformer (300) that is usable with various imaging applications. This avoids constraints on image fixed input size and predicts the quality effectively on a native resolution image. A native resolution image (304) is transformed into a multi-scale representation (302), enabling the Transformer's self-attention mechanism to capture information on both fine-grained detailed patches and coarse-grained global patches. Spatial embedding (316) is employed to map patch positions to a fixed grid, in which patch locations at each scale are hashed to the same grid. A separate scale embedding (318) is employed to distinguish patches coming from different scales in the multiscale representation. Self-attention (508) is performed to create a final image representation. In some instances, prior to performing self-attention, the system may prepend a learnable classification token (322) to the set of input tokens.
    Type: Grant
    Filed: July 1, 2021
    Date of Patent: January 30, 2024
    Assignee: Google LLC
    Inventors: Junjie Ke, Feng Yang, Qifei Wang, Yilin Wang, Peyman Milanfar
  • Publication number: 20240020735
    Abstract: Various embodiments of systems and methods for cross media joint friend and item recommendations are disclosed herein.
    Type: Application
    Filed: February 24, 2023
    Publication date: January 18, 2024
    Applicant: Arizona Board of Regents on behalf of Arizona State University
    Inventors: Kai Shu, Suhang Wang, Jiliang Tang, Yilin Wang, Huan Liu
  • Publication number: 20240022726
    Abstract: A training dataset that includes a first dataset and a second dataset is received. The first dataset includes a first subset of first videos corresponding to a first context and respective first ground truth quality scores of the first videos, and the second dataset includes a second subset of second videos corresponding to a second context and respective second ground truth quality scores of the second videos. A machine learning model is trained to predict the respective first ground truth quality scores and the respective second ground truth quality scores. Training the model includes training it to obtain a global quality score for one of the videos; and training it to map the global quality score to context-dependent predicted quality scores. The context-dependent predicted quality scores include a first context-dependent predicted quality score corresponding to the first context and a second context-dependent predicted quality score corresponding to the second context.
    Type: Application
    Filed: July 12, 2022
    Publication date: January 18, 2024
    Inventors: Yilin Wang, Balineedu Adsumilli
  • Patent number: 11875510
    Abstract: The present disclosure relates to systems, methods, and non-transitory computer-readable media that utilizes a neural network having a hierarchy of hierarchical point-wise refining blocks to generate refined segmentation masks for high-resolution digital visual media items. For example, in one or more embodiments, the disclosed systems utilize a segmentation refinement neural network having an encoder and a recursive decoder to generate the refined segmentation masks. The recursive decoder includes a deconvolution branch for generating feature maps and a refinement branch for generating and refining segmentation masks. In particular, in some cases, the refinement branch includes a hierarchy of hierarchical point-wise refining blocks that recursively refine a segmentation mask generated for a digital visual media item.
    Type: Grant
    Filed: March 12, 2021
    Date of Patent: January 16, 2024
    Assignee: Adobe Inc.
    Inventors: Yilin Wang, Chenglin Yang, Jianming Zhang, He Zhang, Zhe Lin
  • Patent number: 11854244
    Abstract: A panoptic labeling system includes a modified panoptic labeling neural network (“modified PLNN”) that is trained to generate labels for pixels in an input image. The panoptic labeling system generates modified training images by combining training images with mask instances from annotated images. The modified PLNN determines a set of labels representing categories of objects depicted in the modified training images. The modified PLNN also determines a subset of the labels representing categories of objects depicted in the input image. For each mask pixel in a modified training image, the modified PLNN calculates a probability indicating whether the mask pixel has the same label as an object pixel. The modified PLNN generates a mask label for each mask pixel, based on the probability. The panoptic labeling system provides the mask label to, for example, a digital graphics editing system that uses the labels to complete an infill operation.
    Type: Grant
    Filed: October 20, 2022
    Date of Patent: December 26, 2023
    Assignee: ADOBE INC.
    Inventors: Sohrab Amirghodsi, Zhe Lin, Yilin Wang, Tianshu Yu, Connelly Barnes, Elya Shechtman
  • Patent number: 11854165
    Abstract: A method includes training a first model to measure the banding artefacts, training a second model to deband the image, and generating a debanded image for the image using the second model. Training the first model can include selecting a first set of first training images, generating a banding edge map for a first training image, where the map includes weights that emphasize banding edges and de-emphasize true edges in the first training image, and using the map and a luminance plane of the first training image as input to the first model. Training the second model can include selecting a second set of second training images, generating a debanded training image for a second training image, generating a banding score for the debanded training image using the first model, and using the banding score in a loss function used in training the second model.
    Type: Grant
    Filed: May 19, 2020
    Date of Patent: December 26, 2023
    Assignee: GOOGLE LLC
    Inventors: Yilin Wang, Balineedu Adsumilli, Feng Yang
  • Publication number: 20230401716
    Abstract: Systems and methods for image segmentation are described. Embodiments of the present disclosure receive an image depicting an object; generate image features for the image by performing a convolutional self-attention operation that outputs a plurality of attention-weighted values for a convolutional kernel applied at a position of a sliding window on the image; and generate label data that identifies the object based on the image features.
    Type: Application
    Filed: June 10, 2022
    Publication date: December 14, 2023
    Inventors: Yilin Wang, Chenglin Yang, Jianming Zhang, He Zhang, Zijun Wei, Zhe Lin
  • Publication number: 20230401717
    Abstract: Systems and methods for image segmentation are described. Embodiments of the present disclosure receive an image depicting an object; generate image features for the image by performing an atrous self-attention operation based on a plurality of dilation rates for a convolutional kernel applied at a position of a sliding window on the image; and generate label data that identifies the object based on the image features.
    Type: Application
    Filed: June 10, 2022
    Publication date: December 14, 2023
    Inventors: Yilin Wang, Chenglin Yang, Jianming Zhang, He Zhang, Zijun Wei, Zhe Lin
  • Publication number: 20230401718
    Abstract: An image processing system generates an image mask from an image. The image is processed by an object detector to identify a region having an object, and the region is classified based on an object type of the object. A masking pipeline is selected from a number of masking pipelines based on the classification of the region. The region is processed using the masking pipeline to generate a region mask. An image mask for the image is generated using the region mask.
    Type: Application
    Filed: June 13, 2022
    Publication date: December 14, 2023
    Inventors: Zijun Wei, Yilin Wang, Jianming Zhang, He Zhang
  • Publication number: 20230319327
    Abstract: Methods, systems, and media for determining perceptual quality indicators of video content items are provided.
    Type: Application
    Filed: June 8, 2022
    Publication date: October 5, 2023
    Inventors: Yilin Wang, Balineedu Adsumilli, Junjie Ke, Hossein Talebi, Joong Yim, Neil Birkbeck, Peyman Milanfar, Feng Yang
  • Publication number: 20230281763
    Abstract: Methods, systems, and non-transitory computer readable storage media are disclosed for utilizing a plurality of neural networks in a multi-branch pipeline to generate image masks for digital images. Specifically, the disclosed system can classify a digital image as a portrait or a non-portrait image. Based on classifying a portrait image, the disclosed system can utilize separate neural networks to generate a first mask portion for a portion of the digital image including a defined boundary region and a second mask portion for a portion of the digital image including a blended boundary region. The disclosed system can generate the mask portion for the blended boundary region by utilizing a trimap generation neural network to automatically generate a trimap segmentation including the blended boundary region. The disclosed system can then merge the first mask portion and the second mask portion to generate an image mask for the digital image.
    Type: Application
    Filed: May 15, 2023
    Publication date: September 7, 2023
    Inventors: He Zhang, Seyed Morteza Safdarnejad, Yilin Wang, Zijun Wei, Jianming Zhang, Salil Tambe, Brian Price
  • Publication number: 20230259778
    Abstract: The disclosure describes one or more implementations of a neural network architecture pruning system that automatically and progressively prunes neural networks. For instance, the neural network architecture pruning system can automatically reduce the size of an untrained or previously-trained neural network without reducing the accuracy of the neural network. For example, the neural network architecture pruning system jointly trains portions of a neural network while progressively pruning redundant subsets of the neural network at each training iteration. In many instances, the neural network architecture pruning system increases the accuracy of the neural network by progressively removing excess or redundant portions (e.g., channels or layers) of the neural network. Further, by removing portions of a neural network, the neural network architecture pruning system can increase the efficiency of the neural network.
    Type: Application
    Filed: April 28, 2023
    Publication date: August 17, 2023
    Inventors: Shikun Liu, Zhe Lin, Yilin Wang, Jianming Zhang, Federico Perazzi
  • Patent number: 11710042
    Abstract: The present disclosure relates to shaping the architecture of a neural network. For example, the disclosed systems can provide a neural network shaping mechanism for at least one sampling layer of a neural network. The neural network shaping mechanism can include a learnable scaling factor between a sampling rate of the at least one sampling layer and an additional sampling function. The disclosed systems can learn the scaling factor based on a dataset while jointly learning the network weights of the neural network. Based on the learned scaling factor, the disclosed systems can shape the architecture of the neural network by modifying the sampling rate of the at least one sampling layer.
    Type: Grant
    Filed: February 5, 2020
    Date of Patent: July 25, 2023
    Assignee: Adobe Inc.
    Inventors: Shikun Liu, Zhe Lin, Yilin Wang, Jianming Zhang, Federico Perazzi