San Francisco, CA, United States of America

Jonathan Mark Igner


 

Average Co-Inventor Count = 9.0

ph-index = 1


Company Filing History:


Years Active: 2025

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1 patent (USPTO):Explore Patents

Title: Innovations of Jonathan Mark Igner

Introduction

Jonathan Mark Igner is an accomplished inventor based in San Francisco, CA. He has made significant contributions to the field of computer vision, particularly in enhancing image capture techniques. His innovative work has led to the development of a patented technology that improves the quality of three-dimensional model reconstruction.

Latest Patents

Igner holds a patent for "Techniques for enhanced image capture using a computer-vision network." This patent discloses methods for enhancing two-dimensional image capture of subjects, such as residential buildings, to maximize feature correspondences for three-dimensional model reconstruction. The computer-vision network he developed provides viewfinder interfaces and analyses that guide improved image capture for specified purposes. Additionally, it generates metrics representing the quality of feature correspondences between images used for reconstructing 3D models. The network also offers feedback at or before image capture time to enhance the quality of feature correspondences.

Career Highlights

Igner is currently employed at Hover, Inc., where he continues to innovate in the field of computer vision. His work at Hover has allowed him to collaborate with talented individuals in the industry, further advancing the capabilities of image capture technologies.

Collaborations

Some of his notable coworkers include William Castillo and Brandon Scott. Their collaborative efforts contribute to the ongoing success and innovation at Hover, Inc.

Conclusion

Jonathan Mark Igner's contributions to computer vision and image capture techniques exemplify the spirit of innovation. His patented technology not only enhances the quality of 3D model reconstruction but also showcases the potential of computer-vision networks in various applications.

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