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Emanuele Menegatti

Researcher at University of Padua

Publications -  275
Citations -  4239

Emanuele Menegatti is an academic researcher from University of Padua. The author has contributed to research in topics: Robot & Mobile robot. The author has an hindex of 28, co-authored 254 publications receiving 3402 citations. Previous affiliations of Emanuele Menegatti include Institute for Advanced Study & University of Bologna.

Papers
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Proceedings ArticleDOI

A Robust and Easy to Implement Method for IMU Calibration without External Equipments

TL;DR: A robust and quick calibration protocol that exploits an effective parameterless static filter to reliably detect the static intervals in the sensor measurements, where it is assumed local stability of the gravity's magnitude and stable temperature.
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A portable three-dimensional LIDAR-based system for long-term and wide-area people behavior measurement:

TL;DR: A portable people behavior measurement system using a three-dimensional LIDAR that enables long-term and wide-area people behavior measurements which are hard for existing people tracking systems.
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Image-based memory for robot navigation using properties of omnidirectional images

TL;DR: A new technique for vision-based robot navigation that can calculate the robot position with variable accuracy (‘hierarchical localisation’) saving computational time when the robot does not need a precise localisation (e.g. when it is travelling through a clear space).
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Fast RGB-D people tracking for service robots

TL;DR: A very fast multi-people tracking algorithm designed to be applied on mobile service robots that exploits RGB-D data and can run in real-time at very high frame rate on a standard laptop without the need for a GPU implementation.
Proceedings ArticleDOI

Tracking people within groups with RGB-D data

TL;DR: A very fast and robust multi-people tracking algorithm suitable for mobile platforms equipped with a RGB-D sensor and an online learned appearance classifier, that robustly specializes on a track while using the other detections as negative examples is proposed.