This page was automatically translated and may contain errors. View in English.

(Sr./Staff) Algorithm Engineer (Computer Vision)

OMNIVISION

Singapore · 全职

抢先申请

经验
任何
薪水
职位空缺
1
发布
1周前
工作模式
在办公室
学历
Ph.D./M.S. in Electrical Engineering, Computer Science, Computational Imaging, Applied Mathematics, or related fields
合格
Candidates with a Ph.D. or M.S. in a relevant technical discipline, or equivalent experience, who have strong computer vision and deep learning expertise and can work collaboratively across teams.
恢复
需要申请

你的工作地点

职位描述

Position overview

OMNIVISION is looking for an Algorithm Engineer to investigate, design, and refine advanced computer vision and deep learning methods for imaging-focused products and use cases.

What you will do

  • Carry out research, development, and tuning of computer vision and deep learning models for image-based applications, including object detection/recognition, video analysis, and image improvement.
  • Create and deliver new deep-learning-based algorithms and features for CMOS image sensors, aligned with product specifications.
  • Evaluate, test, and deploy algorithms within camera processing chains or embedded platforms.
  • Keep up with the latest academic and industry advances, and contribute practical ideas for solving vision and image-quality problems.

Experience and qualifications

  • Ph.D. or M.S., or equivalent hands-on experience, in Electrical Engineering, Computer Science, Computational Imaging, Applied Mathematics, or a closely related discipline.
  • Strong familiarity with computer vision and deep learning, including areas such as recognition, tracking, or 3D reconstruction; exposure to image sensors, ISP workflows, color science, or image quality measurement is advantageous.
  • Demonstrated track record of independent algorithm research, supported by solid mathematical ability.
  • Comfortable coding in C/C++ and Python, with working knowledge of deep learning frameworks.
  • Clear communicator who can work effectively with cross-functional teams.

如果您希望收到回复,请留下您的信息——我们不会将您的信息用于其他用途。

点击浏览拖放,或 粘贴 截图

PNG、JPG、GIF、MP4、WebM、MOV 格式 · 每个文件最大 20MB · 最多 5 个文件

🤖
布罗克瑟助理
在线·即时人工智能帮助
🤖
由 AI 提供支持 · 来自 Broxer Help 的解答