Su Wang - San Jose CA, US Shengyang Dai - San Jose CA, US Akira Nakamura - Cupertino CA, US Takeshi Ohashi - Kanagawa, JP Jun Yokono - Tokyo, JP
Assignee:
Sony Corporation - Tokyo
International Classification:
G06K 9/34
US Classification:
382173, 382128, 382154
Abstract:
Methods and systems disclosed herein provide the capability to automatically process digital pathology images quickly and accurately. According to one embodiment, an digital pathology image segmentation task may be divided into at least two parts. An image segmentation task may be carried out utilizing both bottom-up analysis to capture local definition of features and top-down analysis to use global information to eliminate false positives. In some embodiments, an image segmentation task is carried out using a “pseudo-bootstrapping” iterative technique to produce superior segmentation results. In some embodiments, the superior segmentation results produced by the pseudo-bootstrapping method are used as input in a second segmentation task that uses a combination of bottom-up and top-down analysis.
Shengyang Dai - San Jose CA, US Su Wang - San Jose CA, US Akira Nakamura - San Jose CA, US Takeshi Ohashi - Kanagawa, JP Jun Yokono - Tokyo, JP
Assignee:
Sony Corporation - Tokyo
International Classification:
G06K 9/00 G06K 9/34
US Classification:
382133, 382128, 382134, 382173
Abstract:
Systems and methods for implementing a multi-step image recognition framework for classifying digital images are provided. The provided multi-step image recognition framework utilizes a gradual approach to model training and image classification tasks requiring multi-dimensional ground truths. A first step of the multi-step image recognition framework differentiates a first image region from a remainder image region. Each subsequent step operates on a remainder image region from the previous step. The provided multi-step image recognition framework permits model training and image classification tasks to be performed more accurately and in a less resource intensive fashion than conventional single-step image recognition frameworks.
Digital Image Analysis Utilizing Multiple Human Labels
Shengyang Dai - San Jose CA, US Su Wang - San Jose CA, US Akira Nakamura - San Jose CA, US Takeshi Ohashi - Kanagawa, JP Jun Yokono - Tokyo, JP
Assignee:
Sony Corporation - Tokyo
International Classification:
G06K 9/62
US Classification:
382224, 382158, 382159, 382160, 382161
Abstract:
Systems and methods for implementing a multi-label image recognition framework for classifying digital images are provided. The provided multi-label image recognition framework utilizes an iterative, multiple analysis path approach to model training and image classification tasks. A first iteration of the multi-label image recognition framework generates confidence maps for each label, which are shared by the multiple analysis paths to update the confidence maps in subsequent iterations. The provided multi-label image recognition framework permits model training and image classification tasks to be performed more accurately than conventional single-label image recognition frameworks.
Superpixel-Boosted Top-Down Image Recognition Methods And Systems
Su Wang - San Jose CA, US Shengyang Dai - San Jose CA, US Akira Nakamura - San Jose CA, US Takeshi Ohashi - Kanagawa, JP Jun Yokono - Tokyo, JP
Assignee:
Sony Corporation - Tokyo
International Classification:
G06K 9/62
US Classification:
382159
Abstract:
Systems and methods for implementing a superpixel boosted top-down image recognition framework are provided. The framework utilizes superpixels comprising contiguous pixel regions sharing similar characteristics. Feature extraction methods described herein provide non-redundant image feature vectors for classification model building. The provided framework differentiates a digitized image into a plurality of superpixels. The digitized image is characterized through image feature extraction methods based on the plurality of superpixels. Image classification models are generated from the extracted image features and ground truth labels and may then be used to classify other digitized images.
Graph Cuts-Based Interactive Segmentation Of Teeth In 3-D Ct Volumetric Data
Su Wang - San Jose CA, US Shengyang Dai - San Jose CA, US Xun Xu - Palo Alto CA, US Akira Nakamura - San Jose CA, US
Assignee:
Sony Corporation - Tokyo
International Classification:
G06K 9/00
US Classification:
382128, 128922, 378 4
Abstract:
An interactive segmentation framework for 3-D teeth CT volumetric data enables a user to segment an entire dental region or individual teeth depending upon the types of user input. Graph cuts-based interactive segmentation utilizes a user's scribbles which are collected on several 2-D representative CT slices and are expanded on those slices. Then, a 3-D distance transform is applied to the entire CT volume based on the expanded scribbles. Bony tissue enhancement is added before feeding 3-D CT raw image data into the graph cuts pipeline. The segmented teeth area is able to be directly utilized to reconstruct a 3-D virtual teeth model.
Shengyang Dai - San Jose CA, US Su Wang - San Jose CA, US Akira Nakamura - Cupertino CA, US Takeshi Ohashi - Kanagawa, JP Jun Yokono - Tokyo, JP
International Classification:
G06K 9/00
US Classification:
382128
Abstract:
Systems and methods for implementing a hierarchical image recognition framework for classifying digital images are provided. The provided hierarchical image recognition framework utilizes a multi-layer approach to model training and image classification tasks. A first layer of the hierarchical image recognition framework generates first layer confidence scores, which are utilized by the second layer to produce a final recognition score. The provided hierarchical image recognition framework permits model training and image classification tasks to be performed more accurately and in a less resource intensive fashion than conventional single-layer image recognition frameworks. In some embodiments real-time operator guidance is provided for an image classification task.
Flourescent Dot Counting In Digital Pathology Images
Su Wang - San Jose CA, US Xun Xu - Palo Alto CA, US Akira Nakamura - San Jose CA, US
Assignee:
SONY CORPORATION - Tokyo
International Classification:
G06K 9/00
US Classification:
382128
Abstract:
Fluorescence in situ hybridization (FISH) enables the detection of specific DNA sequences in cell chromosomes by the use of selective staining. Due to the high sensitivity, FISH allows the use of multiple colors to detect multiple targets simultaneously. The target signals are represented as colored dots, and enumeration of these signals is called dot counting. Using a two-stage segmentation framework guarantees locating all potential dots including overlapped dots.
Integrated Interactive Segmentation With Spatial Constraint For Digital Image Analysis
Su Wang - San Jose CA, US Shengyang Dai - San Jose CA, US Xun Xu - Palo Alto CA, US Akira Nakamura - San Jose CA, US Takeshi Ohashi - Kanagawa, JP Jun Yokono - Tokyo, JP
Assignee:
SONY CORPORATION - Tokyo
International Classification:
G06K 9/62
US Classification:
382159
Abstract:
An integrated interactive segmentation with spatial constraint method utilizes a combination of several of the most popular online learning algorithms into one and implements a spatial constraint which defines a valid mask local to the user's given marks. Additionally, both supervised learning and statistical analysis are integrated, which are able to compensate each other. Once prediction and activation are obtained, pixel-wised multiplication is conducted to fully indicate how likely each pixel belongs to the foreground or background.
• Ported Pmc Hyphy Flex Api and Made It Compiled This Is For Version 9.05 However When We Received
Senior Manager, Software Development, Fujitsu Network Communications
Oct 2007 to 2000 DriverTea & vending machine company Redwood City, CA Oct 2005 to Oct 2007 Delivery Truck DriverAmax tranding group Los Angeles, CA Mar 2002 to Jul 2005 Driver/Sales
Education:
homestead high school Sunnyvale, CA 2001 high school
Pittsburgh International Children's Theater & Festival
Sep 2013 to 2000 Programming InternBeijing Fringe Festival
May 2013 to Aug 2013 Project CoordinatorCMU Chinese Students and Scholars Association Pittsburgh, PA Sep 2012 to May 2013 Team MemberPeking University Hall
Sep 2008 to Jul 2012 Volunteer; Project leaderMicro Film Yifenzhisan
Jun 2012 to Jun 2012 Director, Editor, PhotographerCompetition of Theatre Plays of Peking University
Oct 2009 to May 2012 Team LeaderChina National Center for the Performing Arts
Jul 2011 to Sep 2011 Programming Intern; Project Assistant
Education:
Carnegie Mellon University, Heinz School of Public Policy & Management 2012 to 2014 M.A. in Arts Management Candidate. CurrentPeking University, School of Foreign Languages Sep 2008 to Jul 2012 B.A. in French Language and LiteratureParis Institute of Political Studies, France France 2010 to 2011 Exchange StudentUniversity of California, Berkeley Berkeley, CA 2010 to 2010 Summer School Student
Skills:
Mandarin, English, French, Video Shooting and Editing, Graphic Design Basics (Adobe Photoshop, Illustrator, InDesign), Adobe Flash, Database Basics, Microsoft Office, Chinese Social Media Tools