Julien Champ
French Institute for Research in Computer Science and Automation
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Publication
Featured researches published by Julien Champ.
Multimedia Systems | 2016
Alexis Joly; Pierre Bonnet; Hervé Goëau; Julien Barbe; Souheil Selmi; Julien Champ; Samuel Dufour-Kowalski; Antoine Affouard; Jennifer Carré; Jean-François Molino; Nozha Boujemaa; Daniel Barthélémy
Pl@ntNet is an innovative participatory sensing platform relying on image-based plants identification as a mean to enlist non-expert contributors and facilitate the production of botanical observation data. One year after the public launch of the mobile application, we carry out a self-critical evaluation of the experience with regard to the requirements of a sustainable and effective ecological surveillance tool. We first demonstrate the attractiveness of the developed multimedia system (with more than 90K end-users) and the nice self-improving capacities of the whole collaborative workflow. We then point out the current limitations of the approach towards producing timely and accurate distribution maps of plants at a very large scale. We discuss in particular two main issues: the bias and the incompleteness of the produced data. We finally open new perspectives and describe upcoming realizations towards bridging these gaps.
acm multimedia | 2013
Nicolas Hervé; Marie-Luce Viaud; Jérôme Thièvre; Agnès Saulnier; Julien Champ; Pierre Letessier; Olivier Buisson; Alexis Joly
Who said What, Where and How? How are images, video and stories spreading out? Who produces the information? OTMedia addresses these questions by collecting, enriching and analysing continuously more than 1500 streams of French media from TV Radio, Web, AFP, and Twitter. Two studies on media produced by end users with the OTMedia framework are presented.
acm multimedia | 2016
Alexis Joly; Hervé Goëau; Julien Champ; Samuel Dufour-Kowalski; Henning Müller; Pierre Bonnet
Large scale biodiversity monitoring is essential for sustainable development (earth stewardship). With the recent advances in computer vision, we see the emergence of more and more effective identification tools allowing to set-up large-scale data collection platforms such as the popular Pl@ntNet initiative that allow to reuse interaction data. Although it covers only a fraction of the world flora, this platform is already being used by more than 300K people who produce tens of thousands of validated plant observations each year. This explicitly shared and validated data is only the tip of the iceberg. The real potential relies on the millions of raw image queries submitted by the users of the mobile application for which there is no human validation. People make such requests to get information on a plant along a hike or something they find in their garden but not know anything about. Allowing the exploitation of such contents in a fully automatic way could scale up the world-wide collection of implicit plant observations by several orders of magnitude, which can complement the explicit monitoring efforts. In this paper, we first survey existing automated plant identification systems through a five-year synthesis of the PlantCLEF benchmark and an impact study of the Pl@ntNet platform. We then focus on the implicit monitoring scenario and discuss related research challenges at the frontier of computer science and biodiversity studies. Finally, we discuss the results of a preliminary study focused on implicit monitoring of invasive species in mobile search logs. We show that the results are promising but that there is room for improvement before being able to automatically share implicit observations within international platforms.
acm multimedia | 2012
Alexis Joly; Julien Champ; Pierre Letessier; Nicolas Hervé; Olivier Buisson; Marie-Luce Viaud
This paper presents a visual-based media event detection system based on the automatic discovery of the most circulated images across the main news media (news websites, press agencies, TV news and newspapers). Its main originality is to rely on the transmedia contextual information to denoise the raw visual detections and consequently focus on the most salient transmedia events.
acm multimedia | 2013
Pierre Letessier; Nicolas Hervé; Julien Champ; Alexis Joly; Buisson Olivier; Amel Hamzaoui
State-of-the-art visual search methods allow retrieving efficiently small rigid objects in very large image datasets (e.g. logos, paintings, etc.). Users perception of the classical query-by-window paradigm is however affected by the fact that many submitted queries actually return nothing or only junk results. We demonstrate in this demo that the perception can be radically different if the objects of interest are rather suggested to the user by pre-computing relevant clusters of instances. Impressive results involving very small objects discovered in a web collection of 110K images are demonstrated through a simple interactive GUI.
cross language evaluation forum | 2015
Julien Champ; Titouan Lorieul; Maximilien Servajean; Alexis Joly
IEEE Transactions on Multimedia | 2017
Maximilien Servajean; Alexis Joly; Dennis E. Shasha; Julien Champ; Esther Pacitti
cross language evaluation forum | 2016
Alexis Joly; Jean-Christophe Lombardo; Julien Champ; Anjara Saloma
cross language evaluation forum | 2016
Julien Champ; Hervé Goëau; Alexis Joly
acm multimedia | 2016
Maximilien Servajean; Alexis Joly; Dennis E. Shasha; Julien Champ; Esther Pacitti
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French Institute for Research in Computer Science and Automation
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