Aparna taneja eth zurich

aparna taneja eth zurich

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Peidong Liu Westlake U. Torsten Sattler Chalmers U. Minds short research presentation [. Reconstructing Rome: 3 million images, [ pdf ] extended version a talk at Google [video]. Relive an event from multiple viewpoints: unstructured video-based rendering [ reconstruction with semantic scene understanding.

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Inside ETH Zurich
Aparna Taneja. Search within Aparna Taneja's work. SearchSearch. Home � Aparna Vision & Geometry Group, ETH Zurich, Zurich, Switzerland.,; Marc Pollefeys. Aparna Taneja received the bachelor's and master's degrees in computer science ETH Zurich in , under the supervision of Prof. Marc Pollefeys in the. We propose a method to detect changes in the geometry of a city using panoramic images captured by a car driving around the city. The proposed method can be.
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In collaboration with an NGO, we conduct a large-scale field study consisting of beneficiaries for 6 weeks and track key engagement metrics in a mobile health awareness program. We demonstrate that beneficiaries in the DFL group experience statistically significant reductions in cumulative engagement drop, while those in the Predict-then-Optimize group do not. Preview Preview abstract The widespread availability of cell phones has enabled non-profits to deliver critical health information to their beneficiaries in a timely manner. Milind Tambe. Identifying the right features to make accurate predictions of conflicts at the required spatial granularity using a sparse conflict training dataset is the key challenge that we address in this paper.