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Jana Kosecka

Researcher at George Mason University

Publications -  166
Citations -  10467

Jana Kosecka is an academic researcher from George Mason University. The author has contributed to research in topics: Object detection & Motion estimation. The author has an hindex of 45, co-authored 155 publications receiving 9087 citations. Previous affiliations of Jana Kosecka include Austrian Institute of Technology & University of Pennsylvania.

Papers
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Proceedings ArticleDOI

Extraction, matching and pose recovery based on dominant rectangular structures

TL;DR: This paper presents an approach for automatic extraction of dominant rectangular structures from a single view and shows how they facilitate the recovery of camera pose, planar structure and matching across widely separated views.
Proceedings ArticleDOI

End-to-End Learning of Keypoint Detector and Descriptor for Pose Invariant 3D Matching

TL;DR: An end-to-end learning framework for keypoint detection and its representation (descriptor) for 3D depth maps or 3D scans is proposed, where the two can be jointly optimized towards task-specific objectives without a need for separate annotations.
Proceedings ArticleDOI

Semantic segmentation with heterogeneous sensor coverages

TL;DR: An effective and efficient strategy for inducing the graph structure of Conditional Random Field used for inference and a novel method for computing the sensor domain dependent potentials are proposed and quantitatively validate the proposal in two publicly available datasets.
Posted Content

Hierarchical Kinematic Human Mesh Recovery

TL;DR: A new technique for regression of human parametric model that is explicitly informed by the known hierarchical structure, including joint interdependencies of the model, results in a strong prior-informed design of the regressor architecture and an associated hierarchical optimization that is flexible to be used in conjunction with the current standard frameworks for 3D human mesh recovery.
Posted Content

Deep Convolutional Features for Image Based Retrieval and Scene Categorization.

TL;DR: This paper examines several pooling strategies derived for CNN features and demonstrates superior performance on the image retrieval task (INRIA Holidays) at the fraction of the computational cost, while using a relatively small memory requirements.