Semantic Image Interpretation (SII) is the task of extracting structured semantic descriptions from images. It is widely agreed that the combined use of visual data and background knowledge is of great importance for SII. Recently, Statistical Relational Learning (SRL) approaches have been developed for reasoning under uncertainty and learning in the presence of data and rich knowledge. Logic Tensor Networks (LTNs) are an SRL framework which integrates neural networks with first-order fuzzy logic to allow (i) efficient learning from noisy data in the presence of logical constraints, and (ii) reasoning with logical formulas describing general properties of the data. In this paper, we develop and apply LTNs to two of the main tasks of SII, n...
Neuro-Symbolic models combine the best of two worlds, knowledge representation capabilities of symbo...
A convolutional neural network (CNN) learning structure is proposed, with added interpretability-ori...
In visual reasoning, the achievement of deep learning significantly improved the accuracy of results...
Semantic Image Interpretation (SII) is the task of extracting structured semantic descriptions from ...
This paper presents a revision of Real Logic and its implementation with Logic Tensor Networks to ad...
Semantic Image Interpretation (SII) is the process of generating a structured description of the con...
Semantic Image Interpretation is the task of extracting a structured semantic description from image...
The detection of semantic relationships between objects represented in an image is one of the fundam...
Semantic image interpretation can vastly benefit from approaches that combine sub-symbolic distribut...
Semantic image interpretation (SII) is the process of generating meaningful descriptions of the cont...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Deep learning has been shown to achieve impressive results in several tasks where a large amount of ...
Neuro-symbolic learning, where deep networks are combined with symbolic knowledge can help regulariz...
The opaqueness of deep neural networks hinders their employment in safety-critical applications. Thi...
Image segmentation and classification are basic operations in image analysis and multimedia search w...
Neuro-Symbolic models combine the best of two worlds, knowledge representation capabilities of symbo...
A convolutional neural network (CNN) learning structure is proposed, with added interpretability-ori...
In visual reasoning, the achievement of deep learning significantly improved the accuracy of results...
Semantic Image Interpretation (SII) is the task of extracting structured semantic descriptions from ...
This paper presents a revision of Real Logic and its implementation with Logic Tensor Networks to ad...
Semantic Image Interpretation (SII) is the process of generating a structured description of the con...
Semantic Image Interpretation is the task of extracting a structured semantic description from image...
The detection of semantic relationships between objects represented in an image is one of the fundam...
Semantic image interpretation can vastly benefit from approaches that combine sub-symbolic distribut...
Semantic image interpretation (SII) is the process of generating meaningful descriptions of the cont...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Deep learning has been shown to achieve impressive results in several tasks where a large amount of ...
Neuro-symbolic learning, where deep networks are combined with symbolic knowledge can help regulariz...
The opaqueness of deep neural networks hinders their employment in safety-critical applications. Thi...
Image segmentation and classification are basic operations in image analysis and multimedia search w...
Neuro-Symbolic models combine the best of two worlds, knowledge representation capabilities of symbo...
A convolutional neural network (CNN) learning structure is proposed, with added interpretability-ori...
In visual reasoning, the achievement of deep learning significantly improved the accuracy of results...