AS
AWM Smeulders
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1
This work considers the task of object proposal scoring by integrating the consistency between state- of-the-art object proposal algorithms. It represents a novel way of thinking about proposals, as it starts with the assumption that consistent proposals are most likely centered on objects in the image. We pose the box-consistency problem as a large-scale regression task. The approach starts from existing popular object proposal algorithms and assigns scores to these proposals based on the consistency within and be- tween algorithms. Rather than generating new proposals, we focus on the consistency of state-of-the-art ones and score them on the assumption that mutually agreeing proposals usually indicate the location of objects. This work performs large-scale regression by starting from the strong Gaussian Process model, renowned for its power as a regressor. We extend the model in a natural manner to make effective use of the large number of training samples. We achieve this through metric learning for reshaping the kernel space, while maintaining the kernel-matrix size fixed. We validated the new Gaussian Process models on a standard regression dataset —Airfoil Self-Noise —to prove the generality of the method. Further- more, we test the suitability of the proposed approach for the undertaken box scoring task on Pascal- VOC2007. We conclude that box scoring is possible by employing overlap statistics in a new Gaussian Process model, fine tuned to handle large amounts of data.
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This work considers the task of object proposal scoring by integrating the consistency between state- of-the-art object proposal algorithms. It represents a novel way of thinking about proposals, as it starts with the assumption that consistent proposals are most likely centered on objects in the image. We pose the box-consistency problem as a large-scale regression task. The approach starts from existing popular object proposal algorithms and assigns scores to these proposals based on the consistency within and be- tween algorithms. Rather than generating new proposals, we focus on the consistency of state-of-the-art ones and score them on the assumption that mutually agreeing proposals usually indicate the location of objects. This work performs large-scale regression by starting from the strong Gaussian Process model, renowned for its power as a regressor. We extend the model in a natural manner to make effective use of the large number of training samples. We achieve this through metric learning for reshaping the kernel space, while maintaining the kernel-matrix size fixed. We validated the new Gaussian Process models on a standard regression dataset —Airfoil Self-Noise —to prove the generality of the method. Further- more, we test the suitability of the proposed approach for the undertaken box scoring task on Pascal- VOC2007. We conclude that box scoring is possible by employing overlap statistics in a new Gaussian Process model, fine tuned to handle large amounts of data.
Featureless
Bypassing feature extraction in action categorization
This method introduces an efficient manner of learning action categories without the need of feature estimation. The approach starts from low-level values, in a similar style to the successful CNN methods. However, rather than extracting general image features, we learn to predict specific video representations from raw video data. The benefit of such an approach is that at the same computational expense it can predict 2D video representations as well as 3D ones, based on motion. The proposed model relies on discriminative Wald-boost, which we enhance to a multiclass formulation for the purpose of learning video representations. The suitability of the proposed approach as well as its time efficiency are tested on the UCF11 action recognition dataset.
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This method introduces an efficient manner of learning action categories without the need of feature estimation. The approach starts from low-level values, in a similar style to the successful CNN methods. However, rather than extracting general image features, we learn to predict specific video representations from raw video data. The benefit of such an approach is that at the same computational expense it can predict 2D video representations as well as 3D ones, based on motion. The proposed model relies on discriminative Wald-boost, which we enhance to a multiclass formulation for the purpose of learning video representations. The suitability of the proposed approach as well as its time efficiency are tested on the UCF11 action recognition dataset.