An Improved Normed-Deformable Convolution for Crowd Counting

06/16/2022
by   Xin Zhong, et al.
0

In recent years, crowd counting has become an important issue in computer vision. In most methods, the density maps are generated by convolving with a Gaussian kernel from the ground-truth dot maps which are marked around the center of human heads. Due to the fixed geometric structures in CNNs and indistinct head-scale information, the head features are obtained incompletely. Deformable convolution is proposed to exploit the scale-adaptive capabilities for CNN features in the heads. By learning the coordinate offsets of the sampling points, it is tractable to improve the ability to adjust the receptive field. However, the heads are not uniformly covered by the sampling points in the deformable convolution, resulting in loss of head information. To handle the non-uniformed sampling, an improved Normed-Deformable Convolution (i.e.,NDConv) implemented by Normed-Deformable loss (i.e.,NDloss) is proposed in this paper. The offsets of the sampling points which are constrained by NDloss tend to be more even. Then, the features in the heads are obtained more completely, leading to better performance. Especially, the proposed NDConv is a light-weight module which shares similar computation burden with Deformable Convolution. In the extensive experiments, our method outperforms state-of-the-art methods on ShanghaiTech A, ShanghaiTech B, UCF_QNRF, and UCF_CC_50 dataset, achieving 61.4, 7.8, 91.2, and 167.2 MAE, respectively. The code is available at https://github.com/bingshuangzhuzi/NDConv

READ FULL TEXT

page 1

page 3

page 4

research
08/03/2023

Revisiting Deformable Convolution for Depth Completion

Depth completion, which aims to generate high-quality dense depth maps f...
research
03/16/2023

Cross-head Supervision for Crowd Counting with Noisy Annotations

Noisy annotations such as missing annotations and location shifts often ...
research
08/10/2019

Bayesian Loss for Crowd Count Estimation with Point Supervision

In crowd counting datasets, each person is annotated by a point, which i...
research
12/31/2021

Scene-Adaptive Attention Network for Crowd Counting

In recent years, significant progress has been made on the research of c...
research
04/05/2023

Trap-Based Pest Counting: Multiscale and Deformable Attention CenterNet Integrating Internal LR and HR Joint Feature Learning

Pest counting, which predicts the number of pests in the early stage, is...
research
10/18/2022

Inception-Based Crowd Counting – Being Fast while Remaining Accurate

Recent sophisticated CNN-based algorithms have demonstrated their extrao...
research
04/07/2021

DG-Font: Deformable Generative Networks for Unsupervised Font Generation

Font generation is a challenging problem especially for some writing sys...

Please sign up or login with your details

Forgot password? Click here to reset