2,614 research outputs found
Visual Summary of Egocentric Photostreams by Representative Keyframes
Building a visual summary from an egocentric photostream captured by a
lifelogging wearable camera is of high interest for different applications
(e.g. memory reinforcement). In this paper, we propose a new summarization
method based on keyframes selection that uses visual features extracted by
means of a convolutional neural network. Our method applies an unsupervised
clustering for dividing the photostreams into events, and finally extracts the
most relevant keyframe for each event. We assess the results by applying a
blind-taste test on a group of 20 people who assessed the quality of the
summaries.Comment: Paper accepted in the IEEE First International Workshop on Wearable
and Ego-vision Systems for Augmented Experience (WEsAX). Turin, Italy. July
3, 201
The Evolution of First Person Vision Methods: A Survey
The emergence of new wearable technologies such as action cameras and
smart-glasses has increased the interest of computer vision scientists in the
First Person perspective. Nowadays, this field is attracting attention and
investments of companies aiming to develop commercial devices with First Person
Vision recording capabilities. Due to this interest, an increasing demand of
methods to process these videos, possibly in real-time, is expected. Current
approaches present a particular combinations of different image features and
quantitative methods to accomplish specific objectives like object detection,
activity recognition, user machine interaction and so on. This paper summarizes
the evolution of the state of the art in First Person Vision video analysis
between 1997 and 2014, highlighting, among others, most commonly used features,
methods, challenges and opportunities within the field.Comment: First Person Vision, Egocentric Vision, Wearable Devices, Smart
Glasses, Computer Vision, Video Analytics, Human-machine Interactio
Spott : on-the-spot e-commerce for television using deep learning-based video analysis techniques
Spott is an innovative second screen mobile multimedia application which offers viewers relevant information on objects (e.g., clothing, furniture, food) they see and like on their television screens. The application enables interaction between TV audiences and brands, so producers and advertisers can offer potential consumers tailored promotions, e-shop items, and/or free samples. In line with the current views on innovation management, the technological excellence of the Spott application is coupled with iterative user involvement throughout the entire development process. This article discusses both of these aspects and how they impact each other. First, we focus on the technological building blocks that facilitate the (semi-) automatic interactive tagging process of objects in the video streams. The majority of these building blocks extensively make use of novel and state-of-the-art deep learning concepts and methodologies. We show how these deep learning based video analysis techniques facilitate video summarization, semantic keyframe clustering, and (similar) object retrieval. Secondly, we provide insights in user tests that have been performed to evaluate and optimize the application's user experience. The lessons learned from these open field tests have already been an essential input in the technology development and will further shape the future modifications to the Spott application
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