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Kanade Amano
Kanade is a surname. Notable people with the surname include: *Mihir Kanade, Indian author and professor of international law and human rights *Takeo Kanade (born 1945), Japanese computer scientist *Kranti Kanade, Indian filmmaker See also *Kanade–Lucas–Tomasi feature tracker, is an approach to feature extraction in computer vision *Lucas–Kanade method, is a widely used differential method for optical flow in computer vision *Tomasi–Kanade factorization The Tomasi–Kanade factorization is the seminal work by Carlo Tomasi and Takeo Kanade in the early 1990s. It charted out an elegant and simple solution based on a SVD-based factorization scheme for analysing image measurements of a rigid object c ...
, is the seminal work by Carlo Tomasi and Takeo Kanade in the early 1990s {{Surname ...
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Mihir Kanade
Mihir Kanade is an author and professor of international law, human rights and development at the University for Peace (UPEACE), a university founded by the United Nations. He holds the concurrent positions of the Academic Coordinator of UPEACE since 2016, the Head of its Department of International Law since 2014, and the Director of the UPEACE Human Rights Centre since 2009. Kanade is best known for his contribution to the promotion of the human right to development. He chairs the drafting group appointed by the Office of the United Nations High Commissioner for Human Rights and the Chair-Rapporteur of the Intergovernmental Working Group on the Right to Development, for preparing the “zero draft” of a legally binding instrument on the right to development. On 13 March 2020, Kanade was elected by the United Nations Human Rights Council as a member of the Expert Mechanism on the Right to Development in representation of the Asia-Pacific region. The Human Rights Council renewed ...
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Takeo Kanade
is a Japanese computer scientist and one of the world's foremost researchers in computer vision. He is Uncas A. Whitaker, U.A. and Helen Whitaker Professor at Carnegie Mellon University. He has approximately 300 peer-reviewed academic publications and holds around 20 patents. Honors and achievements * In 1997, he was elected to the US National Academy of Engineering for contributions to computer vision and robotics. * In 1997, he was elected to the American Academy of Arts and Sciences * In 1999 he was inducted as a Fellow of the Association for Computing Machinery. * In 2008 Kanade received the The Franklin Institute Awards, Bower Award and Prize for Achievement in Science from The Franklin Institute in Philadelphia, Pennsylvania. * A special event called TK60: Celebrating Takeo Kanade's vision was held to commemorate his 60th birthday. This event was attended by prominent computer vision researchers. * Elected member of American Association of Artificial Intelligence, Robotics ...
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Kranti Kanade
Kranti Kanade is a National Award winning Indian filmmaker. His films include ''Peepal Tree'', ''CRD (film)'', ''Gandhi of the Month'', ''Mahek (film), Mahek'' and ''Chaitra (film), Chaitra''. He studied at UCLA (University of California, Los Angeles) and Film and Television Institute of India, FTII (Film and Television Institute of India). Films ''Peepal Tree'' Based on true events, it deals with the issue of illegal tree killings in India. When a Police Academy cuts Sacred Trees, a concerned Family confronts them only to learn it is a non-cognizable offense without penal provision. They approach a Tree Activist who saves trees by all means. The community gathers under the tree at night to protect it but it is not that simple." ''CRD'' Set in the world of College Theatre, CRD probes fascism and fierce competition in arts with a wildly innovative narrative style. It released theatrically in US and India to major critical acclaim and commercial success gaining 100% rating oRot ...
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Kanade–Lucas–Tomasi Feature Tracker
In computer vision, the Kanade–Lucas–Tomasi (KLT) feature tracker is an approach to feature extraction. It is proposed mainly for the purpose of dealing with the problem that traditional image registration techniques are generally costly. KLT makes use of spatial intensity information to direct the search for the position that yields the best match. It is faster than traditional techniques for examining far fewer potential matches between the images. The registration problem The traditional image registration problem can be characterized as follows: Given two functions F(x) and G(x), representing pixel values at each location x in two images, respectively, where x is a vector. We wish to find the disparity vector h that minimizes some measure of the difference between F(x+h) and G(x), for x in some region of interest R. Some measures of the difference between F(x+h) and G(x): * L1 norm = \sum_\left\vert F(x+h)-G(x) \right\vert * L2 norm = \sqrt * Negative of normalized correla ...
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Lucas–Kanade Method
In computer vision, the Lucas–Kanade method is a widely used differential method for optical flow estimation developed by Bruce D. Lucas and Takeo Kanade. It assumes that the flow is essentially constant in a local neighbourhood of the pixel under consideration, and solves the basic optical flow equations for all the pixels in that neighbourhood, by the least squares criterion.B. D. Lucas and T. Kanade (1981), An iterative image registration technique with an application to stereo vision.' Proceedings of Imaging Understanding Workshop, pages 121--130Bruce D. Lucas (1984) Generalized Image Matching by the Method of Differences' (doctoral dissertation) By combining information from several nearby pixels, the Lucas–Kanade method can often resolve the inherent ambiguity of the optical flow equation. It is also less sensitive to image noise than point-wise methods. On the other hand, since it is a purely local method, it cannot provide flow information in the interior of uniform reg ...
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