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Kitware's computer vision team is a leader in the creation of cutting-edge algorithms and software for automated image and video analysis. Our solutions embrace deep learning and add measurable value to government agencies, commercial organizations, and academic institutions worldwide. We understand the difficulties in extracting, interpreting, and utilizing information across images, video, metadata, and text, and we recognize the need for robust, affordable solutions. We seek to advance the fields of computer vision and deep learning through research and development and through collaborative projects that build on our open source software platforms, such as VIAME and Telesculptor.
Job Responsibility:
Develop robust solutions in the areas of object based detection, feature detection, motion pattern learning and anomaly detection
Enjoy support and encouragement for participation in national and international conferences (such as CVPR, ICCV, ECCV, WACV, and 3DV)
Be encouraged to seek funding to grow and develop your own research areas, if you desire
Requirements:
PhD in Computer Science or related field
Strong publication record in top-tier research publications and conferences
Highly innovative and demonstrated track record for solving difficult technical challenges using imagery
Experience collaborating successfully with others and thriving in a fast-paced and dynamic work environment
Candidates should include a detailed list of publications as part of their resume/CV
Due to contractual restrictions, only US Citizens will be considered for this position
If not already cleared TS/SCI, willingness and ability to apply for and maintain a TS/SCI security clearance
Nice to have:
Experience with deep learning methods is desirable, but not required
Experience with geospatial coordinates systems and transformation is desirable, but not required