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ReDet: A Rotation-equivariant Detector for Aerial Object Detection

Published in Computer Vision and Pattern Recogn... (2021-03-13)
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  • TL;DR
  • Abstract
  • Authors
  • Datasets
  • References
TL

TL;DR

A Rotation-equivariant Detector (ReDet) is proposed, which explicitly encodes rotation equivariance and rotation invariance and incorporates rotation- equivariant networks into the detector to extract rotation-Equivariant features, which can accurately predict the orientation and lead to a huge reduction of model size.

Abstract

Recently, object detection in aerial images has gained much attention in computer vision. Different from objects in natural images, aerial objects are often distributed with arbitrary orientation. Therefore, the detector requires more parameters to encode the orientation information, which are often highly redundant and inefficient. Moreover, as ordinary CNNs do not explicitly model the orientation variation, large amounts of rotation augmented data is needed to train an accurate object detector. In this paper, we propose a Rotation-equivariant Detector (ReDet) to address these issues, which explicitly encodes rotation equivariance and rotation invariance. More precisely, we incorporate rotation-equivariant networks into the detector to extract rotation-equivariant features, which can accurately predict the orientation and lead to a huge reduction of model size. Based on the rotation-equivariant features, we also present Rotation-invariant RoI Align (RiRoI Align), which adaptively extracts rotation-invariant features from equivariant features according to the orientation of RoI. Extensive experiments on several challenging aerial image datasets DOTA-v1.0, DOTA-v1.5 and HRSC2016, show that our method can achieve state-of-the-art performance on the task of aerial object detection. Compared with previous best results, our ReDet gains 1.2, 3.5 and 2.6 mAP on DOTA-v1.0, DOTA-v1.5 and HRSC2016 respectively while reducing the number of parameters by 60% (313 Mb vs. 121 Mb). The code is available at: https://github.com/csuhan/ReDet.

Authors

Jiaming Han

1 Paper

Jian Ding

1 Paper

Nan Xue

1 Paper

Datasets

DOTA

Dataset for Object deTection in Aerial Images

References44 items

1

PyTorch: An Imperative Style, High-Performance Deep Learning Library

Computer ScienceMathematics
2

Deep Residual Learning for Image Recognition

3

Faster R-CNN: Towards Real-Time Object Detection with Region Proposal Networks

4

Group Equivariant Convolutional Networks

5

Spatial Transformer Networks

Research Impact

445

Citations

44

References

1

Datasets

4

Guisong Xia

1 Paper

6

Mask R-CNN

7

Feature Pyramid Networks for Object Detection

8

You Only Look Once: Unified, Real-Time Object Detection

9

Fast R-CNN

10

Rich Feature Hierarchies for Accurate Object Detection and Semantic Segmentation

11

SSD: Single Shot MultiBox Detector

12

Focal Loss for Dense Object Detection

13

DOTA: A Large-Scale Dataset for Object Detection in Aerial Images

14

Deformable Convolutional Networks

15

MMDetection: Open MMLab Detection Toolbox and Benchmark

16

Hybrid Task Cascade for Instance Segmentation

17

Align Deep Features for Oriented Object Detection

18

Oriented Object Detection in Aerial Images with Box Boundary-Aware Vectors

19

Learning Center Probability Map for Detecting Objects in Aerial Images

20

Dynamic Refinement Network for Oriented and Densely Packed Object Detection

21

SCRDet++: Detecting Small, Cluttered and Rotated Objects via Instance-Level Feature Denoising and Rotation Loss Smoothing

22

Arbitrary-Oriented Object Detection with Circular Smooth Label

23

Oriented Objects as pairs of Middle Lines

24

Gliding Vertex on the Horizontal Bounding Box for Multi-Oriented Object Detection

25

General E(2)-Equivariant Steerable CNNs

26

R3Det: Refined Single-Stage Detector with Feature Refinement for Rotating Object

27

Learning RoI Transformer for Oriented Object Detection in Aerial Images

28

Objects as Points

29

CAD-Net: A Context-Aware Detection Network for Objects in Remote Sensing Imagery

30

SCRDet: Towards More Robust Detection for Small, Cluttered and Rotated Objects

31

Deformable Faster R-CNN with Aggregating Multi-Layer Features for Partially Occluded Object Detection in Optical Remote Sensing Images

32

Toward Arbitrary-Oriented Ship Detection With Rotated Region Proposal and Discrimination Networks

33

Towards Multi-class Object Detection in Unconstrained Remote Sensing Imagery

34

Rotation-Sensitive Regression for Oriented Scene Text Detection

35

Learning a Rotation Invariant Detector with Rotatable Bounding Box

36

Learning Steerable Filters for Rotation Equivariant CNNs

37

Arbitrary-Oriented Scene Text Detection via Rotation Proposals

38

A High Resolution Optical Satellite Image Dataset for Ship Recognition and Some New Baselines

39

Oriented Response Networks

40

Rotation Equivariant Vector Field Networks

41

Harmonic Networks: Deep Translation and Rotation Equivariance

42

Learning Rotation-Invariant Convolutional Neural Networks for Object Detection in VHR Optical Remote Sensing Images

43

Robust Scene Text Recognition with Automatic Rectification

44

Learning Object-Wise Semantic Representation for Detection in Remote Sensing Imagery

Authors

Field of Study

Computer Science

Journal Information

Name

2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)

Venue Information

Name

Computer Vision and Pattern Recognition

Type

conference

URL

https://ieeexplore.ieee.org/xpl/conhome.jsp?punumber=1000147

Alternate Names

  • CVPR
  • Comput Vis Pattern Recognit