Kuyen Y Tsao

age ~54

from Foster City, CA

Also known as:
  • Ivan Tsao
  • Ku-Yen Tsao
  • Yen Tsao Kuyen
  • Yen Tsao Ku
  • Ku Y Tsao

Kuyen Tsao Phones & Addresses

  • Foster City, CA
  • 1701 Monte Vista St, Pasadena, CA 91106
  • 305 California Blvd, Pasadena, CA 91106 • 6267931634
  • Elmhurst, NY
  • Monterey Park, CA
  • New York, NY
  • Arcadia, CA
  • Evanston, IL
  • Piscataway, NJ
  • 8516 53Rd Ave, Elmhurst, NY 11373 • 7182055259
Name / Title
Company / Classification
Phones & Addresses
Kuyen Tsao
Eqbic, LLC
Entertainment Technologies
852 Vega Cir, San Mateo, CA 94404
1701 Monte Vis St, Pasadena, CA 91106

Us Patents

  • System And Method For Streaming Content To Blu-Ray Devices

    view source
  • US Patent:
    20120170907, Jul 5, 2012
  • Filed:
    Jan 5, 2012
  • Appl. No.:
    13/344579
  • Inventors:
    Mark Johnson - Pasadena CA, US
    Kuyen Tsao - Pasadena CA, US
    Darren Lepke - San Francisco CA, US
  • International Classification:
    H04N 9/80
    H04N 5/93
  • US Classification:
    386241, 386353, 386E09011, 386E05028
  • Abstract:
    A standard Clip Information (“CLPI”) file is pre-defined for use in a Blu-ray environment. The CLPI file is structured to specify a set of parameters that are determined independent of any particular content segment. A content segment is structured to conform to the standard CLPI file, including to the set of parameters. The standard CLPI file is used to stream the content segment to the Blu-ray player.
  • Techniques For Predicting Perceptual Video Quality

    view source
  • US Patent:
    20180300869, Oct 18, 2018
  • Filed:
    Jun 25, 2018
  • Appl. No.:
    16/017929
  • Inventors:
    - Los Gatos CA, US
    Dae KIM - San Jose CA, US
    Yu-Chieh LIN - Alhambra CA, US
    David RONCA - Campbell CA, US
    Andy SCHULER - San Jose CA, US
    Kuyen TSAO - Foster City CA, US
    Chi-Hao WU - El Monte CA, US
  • International Classification:
    G06T 7/00
    H04N 19/154
    H04N 21/466
    G06T 9/00
    G06T 7/20
  • Abstract:
    In one embodiment of the present invention, a quality trainer and quality calculator collaborate to establish a consistent perceptual quality metric via machine learning. In a training phase, the quality trainer leverages machine intelligence techniques to create a perceptual quality model that combines objective metrics to optimally track a subjective metric assigned during viewings of training videos. Subsequently, the quality calculator applies the perceptual quality model to values for the objective metrics for a target video, thereby generating a perceptual quality score for the target video. In this fashion, the perceptual quality model judiciously fuses the objective metrics for the target video based on the visual feedback processed during the training phase. Since the contribution of each objective metric to the perceptual quality score is determined based on empirical data, the perceptual quality score is a more accurate assessment of observed video quality than conventional objective metrics.
  • Techniques For Predicting Perceptual Video Quality

    view source
  • US Patent:
    20160335754, Nov 17, 2016
  • Filed:
    May 11, 2015
  • Appl. No.:
    14/709230
  • Inventors:
    - Los Gatos CA, US
    Dae Kim - San Jose CA, US
    Yu-Chieh Lin - Alhambra CA, US
    David Ronca - Campbell CA, US
    Andy Schuler - San Jose CA, US
    Kuyen Tsao - Foster City CA, US
    Chi-Hao Wu - El Monte CA, US
  • International Classification:
    G06T 7/00
    G06T 7/20
  • Abstract:
    In one embodiment of the present invention, a quality trainer and quality calculator collaborate to establish a consistent perceptual quality metric via machine learning. In a training phase, the quality trainer leverages machine intelligence techniques to create a perceptual quality model that combines objective metrics to optimally track a subjective metric assigned during viewings of training videos. Subsequently, the quality calculator applies the perceptual quality model to values for the objective metrics for a target video, thereby generating a perceptual quality score for the target video. In this fashion, the perceptual quality model judiciously fuses the objective metrics for the target video based on the visual feedback processed during the training phase. Since the contribution of each objective metric to the perceptual quality score is determined based on empirical data, the perceptual quality score is a more accurate assessment of observed video quality than conventional objective metrics.

Get Report for Kuyen Y Tsao from Foster City, CA, age ~54
Control profile