The pooling step is one of the key components of the well-known Bag-of-visual words (BoW) model widely used in image classification. In this paper, we propose a novel pooling method, which is called Soft-Assignment Location-Orientation Pooling (SALOP). Inspired by the bag of statistical sampling analysis (Bossa), SALOP also explores the effect of dictionary for pooling method, but leverages both location and orientation information between the local descriptors and the atoms of dictionary to aggregate feature codes. Moreover, different from existing pooling methods, SALOP employs a soft-assignment pooling scheme to handle ambiguity and uncertainty existing in the pooling process. The evaluation is conducted on two image benchmarks: Scene15 ...
In object recognition, soft-assignment coding enjoys computational efficiency and conceptual simplic...
Unsupervised dictionary learning has been a key com-ponent in state-of-the-art computer vision recog...
In object recognition, soft-assignment coding enjoys computational efficiency and conceptual simplic...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
In image classification, the most powerful statistical learning ap-proaches are based on the Bag-of-...
Bag-of-Words lies at a heart of modern object category recognition systems. After descriptors are ex...
In the problem where there is not enough data to use Deep Learning, Bag-of-Visual-Words (BoVW) is st...
Object classification is a highly important area of computer vision and has many applications includ...
Invariant representations in object recognition systems are generally obtained by pooling feature ve...
In this paper we propose a weighted supervised pooling method for visual recognition systems. We com...
In this paper, we propose a novel feature-space local pooling method for the commonly adopted archit...
International audienceInvariant representations in object recognition systems are generally obtained...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
The spatial pooling method such as spatial pyramid matching (SPM) is very crucial in the bag of feat...
In object recognition, soft-assignment coding enjoys computational efficiency and conceptual simplic...
Unsupervised dictionary learning has been a key com-ponent in state-of-the-art computer vision recog...
In object recognition, soft-assignment coding enjoys computational efficiency and conceptual simplic...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
International audienceThe aggregation of image statistics – the so-called pooling step of image clas...
In image classification, the most powerful statistical learning ap-proaches are based on the Bag-of-...
Bag-of-Words lies at a heart of modern object category recognition systems. After descriptors are ex...
In the problem where there is not enough data to use Deep Learning, Bag-of-Visual-Words (BoVW) is st...
Object classification is a highly important area of computer vision and has many applications includ...
Invariant representations in object recognition systems are generally obtained by pooling feature ve...
In this paper we propose a weighted supervised pooling method for visual recognition systems. We com...
In this paper, we propose a novel feature-space local pooling method for the commonly adopted archit...
International audienceInvariant representations in object recognition systems are generally obtained...
Visual Category Recognition aims at fast classification of objects, as well as scenery, action, and ...
The spatial pooling method such as spatial pyramid matching (SPM) is very crucial in the bag of feat...
In object recognition, soft-assignment coding enjoys computational efficiency and conceptual simplic...
Unsupervised dictionary learning has been a key com-ponent in state-of-the-art computer vision recog...
In object recognition, soft-assignment coding enjoys computational efficiency and conceptual simplic...