Due to the rise of lifelog cameras, we have personal video data that is too large to be watched. Video indexing has the potential to provide meta-information for faster video search. This work aims to support lifelog video indexing through automated face priority rating. In a user study, we identified parameters that allow for rating the importance of persons in a video. We implemented these findings to automatically predict the person's importance in video. We show that our algorithm predicts similar person priority ratings like the participants had given. Hence, we contribute to video-based lifelogging through indicating, implementing, and testing face indexing rules that predict how important a person in a video is perceived. Our finding...
Video streaming is becoming the new standard for watching videos, providing an opportunity for affec...
Emerging personal lifelog (PL) collections contain permanent digital records of information associat...
[[abstract]]In this paper, we propose new video attention modeling and content-driven mining strateg...
This paper presents an experience recording system and proposes practical video retrieval techniques...
With the advent of lifelogging cameras the amount of personal video material is massively growing to...
Due to increasing possibilities to create digital video, we are facing the emergence of large video ...
Over recent years we have developed technologies we can now use to analyse, index, browse and search...
We present a method for automatically labelling all faces in video archives, such as TV broadcasts, ...
With the abundance of ubiquitous cameras, it has become easier people take pictures of everything an...
Lifelogging was introduced as the process of passively capturing personal daily events via wearable ...
There is a growing number of lifelogging retrieval systems that have been introduced in several life...
Over the years, recommender systems have been systematically applied in both industry and academia t...
Due to increasing possibilities to create digital video, we are facing the emergence of large video ...
Human memory is a dynamic system that makes accessible certain memories of events based on a hierarc...
We have recently observed a convergence of technologies to foster the emergence of lifelogging as a ...
Video streaming is becoming the new standard for watching videos, providing an opportunity for affec...
Emerging personal lifelog (PL) collections contain permanent digital records of information associat...
[[abstract]]In this paper, we propose new video attention modeling and content-driven mining strateg...
This paper presents an experience recording system and proposes practical video retrieval techniques...
With the advent of lifelogging cameras the amount of personal video material is massively growing to...
Due to increasing possibilities to create digital video, we are facing the emergence of large video ...
Over recent years we have developed technologies we can now use to analyse, index, browse and search...
We present a method for automatically labelling all faces in video archives, such as TV broadcasts, ...
With the abundance of ubiquitous cameras, it has become easier people take pictures of everything an...
Lifelogging was introduced as the process of passively capturing personal daily events via wearable ...
There is a growing number of lifelogging retrieval systems that have been introduced in several life...
Over the years, recommender systems have been systematically applied in both industry and academia t...
Due to increasing possibilities to create digital video, we are facing the emergence of large video ...
Human memory is a dynamic system that makes accessible certain memories of events based on a hierarc...
We have recently observed a convergence of technologies to foster the emergence of lifelogging as a ...
Video streaming is becoming the new standard for watching videos, providing an opportunity for affec...
Emerging personal lifelog (PL) collections contain permanent digital records of information associat...
[[abstract]]In this paper, we propose new video attention modeling and content-driven mining strateg...