A phenomenon or event can be received from various kinds of detectors or under different conditions. Each such acquisition framework is a modality of the phenomenon. Due to the relation between the modalities of multimodal phenomena, a single modality cannot fully describe the event of interest. Since several modalities report on the same event introduces new challenges comparing to the case of exploiting each modality separately. We are interested in designing new algorithmic tools to apply sensor fusion techniques in the particular signal representation of sparse coding which is a favorite methodology in signal processing, machine learning and statistics to represent data. This coding scheme is based on a machine learning technique and ha...
Abstract. This paper presents a methodology for extracting meaningful synchronous structures from mu...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
Unsupervised feature learning methods have proven effective for classification tasks based on a sing...
A phenomenon or event can be received from various kinds of detectors or under different conditions....
Developments in sensing and communication technologies have led to an explosion in the availability ...
International audienceReal-world phenomena involve complex interactions between multiple signal moda...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...
This paper presents a methodology for extracting meaningful synchronous structures from multi-modal ...
Recent years have seen an explosion in multimodal data on the web. It is therefore important to perf...
In this paper we introduce MCA-NMF, a computational model of the acquisition of multi-modal concepts...
Deep vision multimodal learning aims at combining deep visual representation learning with other mod...
International audienceIn this paper we introduce MCA-NMF, a computational model of the acquisition o...
In real-world scenarios, many data processing problems often involve heterogeneous images associated...
Multimodal signals can be defined in general as signals originating from the same physical source, b...
From recalling long forgotten experiences based on a familiar scent or on a piece of music, to lip r...
Abstract. This paper presents a methodology for extracting meaningful synchronous structures from mu...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
Unsupervised feature learning methods have proven effective for classification tasks based on a sing...
A phenomenon or event can be received from various kinds of detectors or under different conditions....
Developments in sensing and communication technologies have led to an explosion in the availability ...
International audienceReal-world phenomena involve complex interactions between multiple signal moda...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...
This paper presents a methodology for extracting meaningful synchronous structures from multi-modal ...
Recent years have seen an explosion in multimodal data on the web. It is therefore important to perf...
In this paper we introduce MCA-NMF, a computational model of the acquisition of multi-modal concepts...
Deep vision multimodal learning aims at combining deep visual representation learning with other mod...
International audienceIn this paper we introduce MCA-NMF, a computational model of the acquisition o...
In real-world scenarios, many data processing problems often involve heterogeneous images associated...
Multimodal signals can be defined in general as signals originating from the same physical source, b...
From recalling long forgotten experiences based on a familiar scent or on a piece of music, to lip r...
Abstract. This paper presents a methodology for extracting meaningful synchronous structures from mu...
This dissertation studies two aspects of feature learning: representation learning and metric in fea...
Unsupervised feature learning methods have proven effective for classification tasks based on a sing...