SHAPE-ADAPTIVE KERNEL NETWORK FOR DENSE OBJECT DETECTION

Title
SHAPE-ADAPTIVE KERNEL NETWORK FOR DENSE OBJECT DETECTION
Authors
김익재Hanjae KimSunghun JoungKwanghoon Sohn
Keywords
객체 검출; 딥러닝
Issue Date
2020-10
Publisher
IEEE International Conference on Image Processing (ICIP)
Abstract
Dense object detectors that are applied over a regular, dense grid have advanced and drawn their attention in recent days. Their fully convolutional nature greatly advances the computational efficiency of object detectors compared to the two-stage detectors. However, the lack of the ability to adjust shape variation on a regular grid is still limited. In this paper we introduce a new framework, shape-adaptive kernel network, to handle spatial manipulation of input data in convolutional kernel space. At the heart of out approach is to align the original kernel space recovering shape variation of each input feature on regular grid. To this end, we propose a shape-adaptive kernel sampler to adjust dynamic convolutional kernel conditioned on input. To increase the flexibility of geometric transformation, a cascade refinement module is designed, which first estimates the global transformation grid and then estimates local offset in convolutional kernel space. Our experiments demonstrate the effectiveness of the shape-adaptive kernel network for dense object detection on various benchmarks.
URI
https://pubs.kist.re.kr/handle/201004/73529
ISSN
1522-4880
Appears in Collections:
KIST Publication > Conference Paper
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