Structure-Regularized Attention for Deformable Object Representation
- URL: http://arxiv.org/abs/2106.06672v1
- Date: Sat, 12 Jun 2021 03:10:17 GMT
- Title: Structure-Regularized Attention for Deformable Object Representation
- Authors: Shenao Zhang, Li Shen, Zhifeng Li, Wei Liu
- Abstract summary: Capturing contextual dependencies has proven useful to improve the representational power of deep neural networks.
Recent approaches that focus on modeling global context, such as self-attention and non-local operation, achieve this goal by enabling unconstrained pairwise interactions between elements.
We consider learning representations for deformable objects which can benefit from context exploitation by modeling the structural dependencies that the data intrinsically possesses.
- Score: 17.120035855774344
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Capturing contextual dependencies has proven useful to improve the
representational power of deep neural networks. Recent approaches that focus on
modeling global context, such as self-attention and non-local operation,
achieve this goal by enabling unconstrained pairwise interactions between
elements. In this work, we consider learning representations for deformable
objects which can benefit from context exploitation by modeling the structural
dependencies that the data intrinsically possesses. To this end, we provide a
novel structure-regularized attention mechanism, which formalizes feature
interaction as structural factorization through the use of a pair of
light-weight operations. The instantiated building blocks can be directly
incorporated into modern convolutional neural networks, to boost the
representational power in an efficient manner. Comprehensive studies on
multiple tasks and empirical comparisons with modern attention mechanisms
demonstrate the gains brought by our method in terms of both performance and
model complexity. We further investigate its effect on feature representations,
showing that our trained models can capture diversified representations
characterizing object parts without resorting to extra supervision.
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