• Stars
    star
    3
  • Rank 3,963,521 (Top 79 %)
  • Language
    Python
  • Created about 5 years ago
  • Updated about 4 years ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

SCS-Siam: Learning Soft Mask Based Feature Fusion with Channel and Spatial Attention for Robust Visual Object Tracking

More Repositories

1

ScratchFormer

ScratchFormer: Remote Sensing Change Detection With Transformers Trained from Scratch
Python
38
star
2

SA2-Net

SA2-Net: Scale-aware Attention Network for Microscopic Image Segmentation (BMVC'23 -- Oral)
Python
17
star
3

PS-ARM

Abstract. Person search is a challenging problem with various real- world applications, that aims at joint person detection and re-identification of a query person from uncropped gallery images. Although, previous study focuses on rich feature information learning, it’s still hard to re- trieve the query person due to the occurrence of appearance deformations and background distractors. In this paper, we propose a novel attention- aware relation mixer (ARM) module for person search, which exploits the global relation between different local regions within RoI of a per- son and make it robust against various appearance deformations and occlusion. The proposed ARM is composed of a relation mixer block and a spatio-channel attention layer. The relation mixer block introduces a spatially attended spatial mixing and a channel-wise attended channel mixing for effectively capturing discriminative relation features within an RoI. These discriminative relation features are further enriched by intro- ducing a spatio-channel attention where the foreground and background discriminability is empowered in a joint spatio-channel space. Our ARM module is generic and it does not rely on fine-grained supervisions or topological assumptions, hence being easily integrated into any Faster R-CNN based person search methods. Comprehensive experiments are performed on two challenging benchmark datasets: CUHK-SYSU [1] and PRW [2]. Our PS-ARM achieves state-of-the-art performance on both datasets. On the challenging PRW dataset, our PS-ARM achieves an absolute gain of 5% in the mAP score over SeqNet, while operating at a comparable speed
Python
13
star
4

DDAM-PS

DDAM-PS: Diligent Domain Adaptive Mixer for Person Search -- WACV2024
Python
10
star
5

SAT

SAT: Scale-Augmented Transformer for Person Search
Python
4
star
6

IRCA-Siam

IRCA-Siam: Improving Object Tracking by Added Noise and Channel Attention
Python
1
star
7

ga2net

1
star