Biologically inspired, from the early HMAX model to Spatial Pyramid Matching, pooling has played an important role in visual recognition pipelines. Spatial pooling, by grouping of local codes, equips these methods with a certain degree of robustness to translation and deformation yet preserving important spatial information. Despite the predominance of this approach in current recognition systems, we have seen little progress to fully adapt the pooling strategy to the task at hand. This paper proposes a model for learning task dependent pooling scheme -- including previously proposed hand-crafted pooling schemes as a particular instantiation. In our work, we investigate the role of different regularization terms showing that the smooth regu...
In the problem where there is not enough data to use Deep Learning, Bag-of-Visual-Words (BoVW) is st...
We propose Regularized Max Pooling (RMP) for image classification. RMP classi-fies an image (or an i...
This paper proposes an adaptive approach to learn class-specific pooling shapes (CSPS) for image cla...
Biologically inspired, from the early HMAX model to Spatial Pyramid Matching, pooling has played an ...
mfritz at mpi-inf.mpg.de Biologically inspired, from the early HMAX model to Spatial Pyramid Match-i...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
In this paper we propose a weighted supervised pooling method for visual recognition systems. We com...
We examine the effect of receptive field designs on the classification accuracy in the commonly adop...
Unsupervised dictionary learning has been a key com-ponent in state-of-the-art computer vision recog...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
Spatial pyramid (SP) representation is an extension of bag-of-feature model which embeds spatial lay...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
© 2016 Elsevier Ltd The human visual system proves expert in discovering patterns in both global and...
In the problem where there is not enough data to use Deep Learning, Bag-of-Visual-Words (BoVW) is st...
We propose Regularized Max Pooling (RMP) for image classification. RMP classi-fies an image (or an i...
This paper proposes an adaptive approach to learn class-specific pooling shapes (CSPS) for image cla...
Biologically inspired, from the early HMAX model to Spatial Pyramid Matching, pooling has played an ...
mfritz at mpi-inf.mpg.de Biologically inspired, from the early HMAX model to Spatial Pyramid Match-i...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
In this paper we propose a weighted supervised pooling method for visual recognition systems. We com...
We examine the effect of receptive field designs on the classification accuracy in the commonly adop...
Unsupervised dictionary learning has been a key com-ponent in state-of-the-art computer vision recog...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
Spatial pyramid (SP) representation is an extension of bag-of-feature model which embeds spatial lay...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
© 2016 Elsevier Ltd The human visual system proves expert in discovering patterns in both global and...
In the problem where there is not enough data to use Deep Learning, Bag-of-Visual-Words (BoVW) is st...
We propose Regularized Max Pooling (RMP) for image classification. RMP classi-fies an image (or an i...
This paper proposes an adaptive approach to learn class-specific pooling shapes (CSPS) for image cla...