Publications by Lorenzo Baraldi

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Scene segmentation using temporal clustering for accessing and re-using broadcast video

Authors: Baraldi, Lorenzo; Grana, Costantino; Cucchiara, Rita

Published in: PROCEEDINGS IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA AND EXPO

Scene detection is a fundamental tool for allowing effective video browsing and re-using. In this paper we present a model … (Read full abstract)

Scene detection is a fundamental tool for allowing effective video browsing and re-using. In this paper we present a model that automatically divides videos into coherent scenes, which is based on a novel combination of local image descriptors and temporal clustering techniques. Experiments are performed to demonstrate the effectiveness of our approach, by comparing our algorithm against two recent proposals for automatic scene segmentation. We also propose improved performance measures that aim to reduce the gap between numerical evaluation and expected results.

2015 Relazione in Atti di Convegno

Shot and Scene Detection via Hierarchical Clustering for Re-using Broadcast Video

Authors: Baraldi, Lorenzo; Grana, Costantino; Cucchiara, Rita

Published in: LECTURE NOTES IN COMPUTER SCIENCE

Video decomposition techniques are fundamental tools for allowing effective video browsing and re-using. In this work, we consider the problem … (Read full abstract)

Video decomposition techniques are fundamental tools for allowing effective video browsing and re-using. In this work, we consider the problem of segmenting broadcast videos into coherent scenes, and propose a scene detection algorithm based on hierarchical clustering, along with a very fast state-of-the-art shot segmentation approach. Experiments are performed to demonstrate the effectiveness of our algorithms, by comparing against recent proposals for automatic shot and scene segmentation.

2015 Relazione in Atti di Convegno

Gesture Recognition in Ego-Centric Videos using Dense Trajectories and Hand Segmentation

Authors: Baraldi, Lorenzo; Paci, Francesco; Serra, Giuseppe; Benini, Luca; Cucchiara, Rita

Published in: IEEE COMPUTER SOCIETY CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS

We present a novel method for monocular hand gesture recognition in ego-vision scenarios that deals with static and dynamic gestures … (Read full abstract)

We present a novel method for monocular hand gesture recognition in ego-vision scenarios that deals with static and dynamic gestures and can achieve high accuracy results using a few positive samples. Specifically, we use and extend the dense trajectories approach that has been successfully introduced for action recognition. Dense features are extracted around regions selected by a new hand segmentation technique that integrates superpixel classification, temporal and spatial coherence. We extensively testour gesture recognition and segmentation algorithms on public datasets and propose a new dataset shot with a wearable camera. In addition, we demonstrate that our solution can work in near real-time on a wearable device.

2014 Relazione in Atti di Convegno

Hand Segmentation for Gesture Recognition in EGO-Vision

Authors: Serra, Giuseppe; Camurri, Marco; Baraldi, Lorenzo; Michela, Benedetti; Cucchiara, Rita

Portable devices for first-person camera views will play a central role in future interactive systems. One necessary step for feasible … (Read full abstract)

Portable devices for first-person camera views will play a central role in future interactive systems. One necessary step for feasible human-computer guided activities is gesture recognition, preceded by a reliable hand segmentation from egocentric vision. In this work we provide a novel hand segmentation algorithm based on Random Forest superpixel classification that integrates light, time and space consistency. We also propose a gesture recognition method based Exemplar SVMs since it requires a only small set of positive samples, hence it is well suitable for the egocentric video applications. Furthermore, this method is enhanced by using segmented images instead of full frames during test phase. Experimental results show that our hand segmentation algorithm outperforms the state-of-the-art approaches and improves the gesture recognition accuracy on both the publicly available EDSH dataset and our dataset designed for cultural heritage applications.

2013 Relazione in Atti di Convegno

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