We address the false response influence problem when learning and applying discriminative parts to construct the mid-level representation in scene classification. It is often caused by the complexity of latent image structure when convolving part filters with input images. This problem makes mid-level representation, even after pooling, not distinct enough to classify input data correctly to cate-gories. Our solution is to learn important spatial pooling regions along with their appearance. The experiments show that this new framework suppresses false response and produces improved results on several datasets, including MIT-Indoor, 15-Scene, and UIUC 8-Sport. When combined with global image features, our method achieves state-of-the-art per...
© 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...
Indoor scenes are characterized by a high intra-class variability, mainly due to the intrinsic varie...
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 ...
Biologically inspired, from the early HMAX model to Spatial Pyramid Matching, pooling has played an ...
We examine the effect of receptive field designs on the classification accuracy in the commonly adop...
Indoor scenes are characterized by a high intra-class variability, mainly due to the intrinsic varie...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
Indoor scenes are characterized by a high intra-class variability, mainly due to the intrinsic varie...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
High-level, or holistic, scene understanding involves reasoning about objects, regions, and the 3D r...
Biologically inspired, from the early HMAX model to Spatial Pyramid Matching, pooling has played an ...
In this paper we propose a simple but efficient image representation for solving the scene classific...
This paper describes our work on classification of outdoor scenes. First, images are partitioned int...
© 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...
Indoor scenes are characterized by a high intra-class variability, mainly due to the intrinsic varie...
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 ...
Biologically inspired, from the early HMAX model to Spatial Pyramid Matching, pooling has played an ...
We examine the effect of receptive field designs on the classification accuracy in the commonly adop...
Indoor scenes are characterized by a high intra-class variability, mainly due to the intrinsic varie...
From the early HMAX model to Spatial Pyramid Matching, spatial pooling has played an important role ...
Indoor scenes are characterized by a high intra-class variability, mainly due to the intrinsic varie...
<p>Scene perception is a fundamental aspect of vision. Humans are capable of analyzing behaviorally-...
High-level, or holistic, scene understanding involves reasoning about objects, regions, and the 3D r...
Biologically inspired, from the early HMAX model to Spatial Pyramid Matching, pooling has played an ...
In this paper we propose a simple but efficient image representation for solving the scene classific...
This paper describes our work on classification of outdoor scenes. First, images are partitioned int...
© 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...
Indoor scenes are characterized by a high intra-class variability, mainly due to the intrinsic varie...