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个人简介
My research area is computer vision and video information analysis. Space-time visual data consists of three fundamental types of information about the world: (i) the spatial appearance of scenes and objects, (ii) their geometric layout and structure, and (iii) their temporal evolution over time (ranging from simple motions to complex actions and behaviors). In my research work I address all these aspects of visual information.
Although space and time are very different in nature, they are closely interrelated. This leads to inherent visual trade-offs between time and space. This is also what makes video much more than just a plain collection of images of the same scene taken from different view-points. Therefore, in contrast to the traditional way of analyzing video on a frame-by-frame basis, my work over the past few years has focused on analyzing simultaneously all available data in entire space-time volumes. I have shown that such a space-time approach is essential in order to perform tasks that are very difficult and often impossible to perform otherwise, when only “slices” of this information are used (such as discrete image frames or discrete feature points). The space-time approach gives rise to new powerful ways of analyzing and exploiting recorded visual information from single and multiple visual sources.
My research work is aimed toward: (a) developing theories and tools for analysis and interpretation of space-time visual information, (b) developing methods to exploit this rich visual information for useful real-world applications, and (c) develop new and improved visual capabilities that exceed optical bounds of today’s visual sensors (including the human eye).
Although space and time are very different in nature, they are closely interrelated. This leads to inherent visual trade-offs between time and space. This is also what makes video much more than just a plain collection of images of the same scene taken from different view-points. Therefore, in contrast to the traditional way of analyzing video on a frame-by-frame basis, my work over the past few years has focused on analyzing simultaneously all available data in entire space-time volumes. I have shown that such a space-time approach is essential in order to perform tasks that are very difficult and often impossible to perform otherwise, when only “slices” of this information are used (such as discrete image frames or discrete feature points). The space-time approach gives rise to new powerful ways of analyzing and exploiting recorded visual information from single and multiple visual sources.
My research work is aimed toward: (a) developing theories and tools for analysis and interpretation of space-time visual information, (b) developing methods to exploit this rich visual information for useful real-world applications, and (c) develop new and improved visual capabilities that exceed optical bounds of today’s visual sensors (including the human eye).
研究兴趣
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Oran Lang,Doron Yaya-Stupp,Ilana Traynis,Heather Cole-Lewis, Chloe R. Bennett, Courtney R. Lyles,Charles Lau,Michal Irani,Christopher Semturs,Dale R. Webster,Greg S. Corrado,Avinatan Hassidim,
EBioMedicine (2024): 105075
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arxiv(2024)
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arxiv(2024)
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Oran Lang,Doron Yaya-Stupp,Ilana Traynis,Heather Cole-Lewis, Chloe R. Bennett, Courtney Lyles,Charles Lau,Michal Irani,Christopher Semturs,Dale R. Webster,Greg S. Corrado,Avinatan Hassidim,
arxiv(2023)
ICMLpp.26199-26214, (2023)
2023 IEEE/CVF International Conference on Computer Vision (ICCV) (2023): 3147-3157
Single Molecule Spectroscopy and Superresolution Imaging XVI (2023)
CVPR 2023pp.6007-6017, (2023)
NeurIPS (2023)
Hila Chefer,Oran Lang,Mor Geva, Volodymyr Polosukhin,Assaf Shocher,Michal Irani,Inbar Mosseri,Lior Wolf
ICLR 2024 (2023)
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