no code implementations • 10 Dec 2020 • Guillaume Le Moing, Phongtharin Vinayavekhin, Don Joven Agravante, Tadanobu Inoue, Jayakorn Vongkulbhisal, Asim Munawar, Ryuki Tachibana
Moreover, learning for different microphone array layouts makes the task more complicated due to the infinite number of possible layouts.
no code implementations • 10 Dec 2020 • Guillaume Le Moing, Phongtharin Vinayavekhin, Tadanobu Inoue, Jayakorn Vongkulbhisal, Asim Munawar, Ryuki Tachibana, Don Joven Agravante
In this paper, we propose novel deep learning based algorithms for multiple sound source localization.
no code implementations • 10 Dec 2020 • Guillaume Le Moing, Don Joven Agravante, Tadanobu Inoue, Jayakorn Vongkulbhisal, Asim Munawar, Ryuki Tachibana, Phongtharin Vinayavekhin
This paper introduces an ensemble of discriminators that improves the accuracy of a domain adaptation technique for the localization of multiple sound sources.
no code implementations • 19 Feb 2020 • Subhajit Chaudhury, Daiki Kimura, Phongtharin Vinayavekhin, Asim Munawar, Ryuki Tachibana, Koji Ito, Yuki Inaba, Minoru Matsumoto, Shuji Kidokoro, Hiroki Ozaki
In this paper, we study the case of event detection in sports videos for unstructured environments with arbitrary camera angles.
1 code implementation • CVPR 2019 • Jayakorn Vongkulbhisal, Phongtharin Vinayavekhin, Marco Visentini-Scarzanella
In this paper, we study the problem of unifying knowledge from a set of classifiers with different architectures and target classes into a single classifier, given only a generic set of unlabelled data.
no code implementations • 22 Jun 2018 • Phongtharin Vinayavekhin, Subhajit Chaudhury, Asim Munawar, Don Joven Agravante, Giovanni De Magistris, Daiki Kimura, Ryuki Tachibana
This paper is a contribution towards interpretability of the deep learning models in different applications of time-series.
no code implementations • 16 Aug 2017 • Asim Munawar, Phongtharin Vinayavekhin, Giovanni De Magistris
In the results section we demonstrate the features of the algorithm using MNIST handwritten digit dataset and latter apply the technique to a real-world obstacle detection problem.