International audienceThis paper presents a methodology for extracting meaningful synchronous structures from multi-modal signals. Simultaneous processing of multi-modal data can reveal information that is unavailable when handling the sources separately. However, in natural high-dimensional data, the statistical dependencies between modalities are, most of the time, not obvious. Learning fundamental multi-modal patterns is an alternative to classical statistical methods. Typically, recurrent patterns are shift invariant, thus the learning should try to find the best matching filters. We present a new algorithm for iteratively learning multi-modal generating functions that can be shifted at all positions in the signal. The proposed algorith...
We present a method for automatic feature extraction and cross-modal mappingusing deep learning. Our...
A phenomenon or event can be received from various kinds of detectors or under different conditions....
In practical machine learning settings, there often exist relations or links between data from diffe...
International audienceThis paper presents a methodology for extracting meaningful synchronous struct...
Abstract. This paper presents a methodology for extracting meaningful synchronous structures from mu...
International audienceReal-world phenomena involve complex interactions between multiple signal moda...
Cross-modal recognition and matching with privileged information are important challenging problems ...
In many problems in machine learning there exist relations between data collections from different m...
While many approaches exist in the literature to learn low-dimensional representations for data coll...
A better similarity mapping function across heterogeneous high-dimensional features is very desirabl...
A novel model is presented to learn bimodally informative structures from audio-visual signals. The ...
People can easily imagine the potential sound while seeing an event. This natural synchronization be...
Multi-modal data analysis methods often learn representations that align different modalities in a n...
Multi-modal semantics has relied on fea-ture norms or raw image data for per-ceptual input. In this ...
From recalling long forgotten experiences based on a familiar scent or on a piece of music, to lip r...
We present a method for automatic feature extraction and cross-modal mappingusing deep learning. Our...
A phenomenon or event can be received from various kinds of detectors or under different conditions....
In practical machine learning settings, there often exist relations or links between data from diffe...
International audienceThis paper presents a methodology for extracting meaningful synchronous struct...
Abstract. This paper presents a methodology for extracting meaningful synchronous structures from mu...
International audienceReal-world phenomena involve complex interactions between multiple signal moda...
Cross-modal recognition and matching with privileged information are important challenging problems ...
In many problems in machine learning there exist relations between data collections from different m...
While many approaches exist in the literature to learn low-dimensional representations for data coll...
A better similarity mapping function across heterogeneous high-dimensional features is very desirabl...
A novel model is presented to learn bimodally informative structures from audio-visual signals. The ...
People can easily imagine the potential sound while seeing an event. This natural synchronization be...
Multi-modal data analysis methods often learn representations that align different modalities in a n...
Multi-modal semantics has relied on fea-ture norms or raw image data for per-ceptual input. In this ...
From recalling long forgotten experiences based on a familiar scent or on a piece of music, to lip r...
We present a method for automatic feature extraction and cross-modal mappingusing deep learning. Our...
A phenomenon or event can be received from various kinds of detectors or under different conditions....
In practical machine learning settings, there often exist relations or links between data from diffe...