Cross-modal representation learning learns a shared embedding between two or more modalities to improve performance in a given task compared to using only one of the modalities. Cross-modal representation learning from different data types - such as images and time-series data (e.g., audio or text data) – requires a deep metric learning loss that minimizes the distance between the modality embeddings. In this paper, we propose to use the contrastive or triplet loss, which uses positive and negative identities to create sample pairs with different labels, for cross-modal representation learning between image and time-series modalities (CMR-IS). By adapting the triplet loss for cross-modal representation learning, higher accuracy in th...
© 1979-2012 IEEE. People can recognize scenes across many different modalities beyond natural images...
In practical machine learning settings, there often exist relations or links between data from diffe...
Cross-modal retrieval is an important field of research today because of the abundance of multi-medi...
Cross-modal representation learning learns a shared embedding between two or more modalities to impr...
Most machine learning applications involve a domain shift between data on which a model has initiall...
Most machine learning applications involve a domain shift between data on which a model has initiall...
In many problems in machine learning there exist relations between data collections from different m...
textabstractDifferences in scanning parameters or modalities can complicate image analysis based on ...
The cross-modal retrieval task can return different modal nearest neighbors, such as image or text. ...
While many approaches exist in the literature to learn low-dimensional representations for data coll...
Abstract—In this paper we study the problem of learning from multiple modal data for purpose of docu...
Cross-modal recognition and matching with privileged information are important challenging problems ...
Cross-modal recognition and matching with privileged information are important challenging problems ...
Machine learning algorithms can have difficulties adapting to data from different sources, for examp...
The heterogeneity gap problem is the main challenge in cross-modal retrieval. Because cross-modal da...
© 1979-2012 IEEE. People can recognize scenes across many different modalities beyond natural images...
In practical machine learning settings, there often exist relations or links between data from diffe...
Cross-modal retrieval is an important field of research today because of the abundance of multi-medi...
Cross-modal representation learning learns a shared embedding between two or more modalities to impr...
Most machine learning applications involve a domain shift between data on which a model has initiall...
Most machine learning applications involve a domain shift between data on which a model has initiall...
In many problems in machine learning there exist relations between data collections from different m...
textabstractDifferences in scanning parameters or modalities can complicate image analysis based on ...
The cross-modal retrieval task can return different modal nearest neighbors, such as image or text. ...
While many approaches exist in the literature to learn low-dimensional representations for data coll...
Abstract—In this paper we study the problem of learning from multiple modal data for purpose of docu...
Cross-modal recognition and matching with privileged information are important challenging problems ...
Cross-modal recognition and matching with privileged information are important challenging problems ...
Machine learning algorithms can have difficulties adapting to data from different sources, for examp...
The heterogeneity gap problem is the main challenge in cross-modal retrieval. Because cross-modal da...
© 1979-2012 IEEE. People can recognize scenes across many different modalities beyond natural images...
In practical machine learning settings, there often exist relations or links between data from diffe...
Cross-modal retrieval is an important field of research today because of the abundance of multi-medi...