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Nicholas R. Howe

Researcher at Smith College

Publications -  40
Citations -  1327

Nicholas R. Howe is an academic researcher from Smith College. The author has contributed to research in topics: Image retrieval & Contextual image classification. The author has an hindex of 16, co-authored 40 publications receiving 1274 citations. Previous affiliations of Nicholas R. Howe include Cornell University.

Papers
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Proceedings Article

Bayesian Reconstruction of 3D Human Motion from Single-Camera Video

TL;DR: A system that reconstructs the 3D motion of human subjects from single-camera video, relying on prior knowledge about human motion, learned from training data, to resolve those ambiguities.
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Document binarization with automatic parameter tuning

TL;DR: An automatic technique for setting parameters in a manner that tunes them to the individual image, yielding a final binarization algorithm that can cut total error by one-third with respect to the baseline version is described.
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A Laplacian Energy for Document Binarization

TL;DR: A new algorithm for document binarization that uses the Laplacian operator to assess the local likelihood of foreground and background labels, Canny edge detection to identify likely discontinuities, and a graph cut implementation to efficiently find the minimum energy solution of an objective function combining these concepts.
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Better Foreground Segmentation Through Graph Cuts

TL;DR: Experiments show that the graph-based method reduces the error around segmented foreground objects, resulting in qualitatively and quantitiatively cleaner segmentations.
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Silhouette Lookup for Automatic Pose Tracking

TL;DR: A simple yet effective algorithm for tracking articulated pose, based upon looking up observed silhouettes in a collection of known poses, is introduced, which runs quickly, can initialize itself without human intervention, and can automatically recover from critical tracking errors made while tracking previous frames in a video sequence.