Joint object contour points and semantics for instance segmentation

Author:

Zhang Wenchao1,Fu Chong123ORCID,Zhu Mai1,Cao Lin4,Tie Ming5,Sham Chiu‐Wing6ORCID

Affiliation:

1. School of Computer Science and Engineering Northeastern University Shenyang China

2. Engineering Research Center of Security Technology of Complex Network System Ministry of Education Shenyang China

3. Key Laboratory of Intelligent Computing in Medical Image Ministry of Education, Northeastern University Shenyang China

4. School of Information and Communication Engineering Beijing Information Science and Technology University Beijing China

5. Science and Technology on Space Physics Laboratory Beijing China

6. School of Computer Science The University of Auckland Auckland New Zealand

Abstract

AbstractThe edges of objects are of great significance to the task of instance segmentation. However, most of the current popular deep neural networks do not pay much attention to the object edge information. More importantly, using the down‐sampling pooling layer in the deep learning network, the edge detail information of the object will be lost. To address this issue, inspired by the manual annotation process, we propose Mask Point R‐CNN aiming at promoting the neural network's attention to the object boundary. Specifically, we introduce the auxiliary task of object contour point detection on the Mask R‐CNN framework, which can effectively improve the gradient flow between different tasks by multi‐task learning and repairing objects' boundary information via feature fusion. Consequently, the model can be more sensitive to the edges of the object and capture more geometric features. Quantitatively, the experimental results show that our Mask Point R‐CNN outperforms vanilla Mask R‐CNN by 3.8% on the Cityscapes dataset and 0.8% on the COCO dataset.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Subject

Artificial Intelligence,Computational Theory and Mathematics,Theoretical Computer Science,Control and Systems Engineering

Reference73 articles.

1. Efficient Interactive Annotation of Segmentation Datasets with Polygon-RNN++

2. Soft-NMS — Improving Object Detection with One Line of Code

3. YOLACT: Real-Time Instance Segmentation

4. SipMaskv2: Enhanced fast image and video instance segmentation;Cao J.;IEEE Transactions on Pattern Analysis and Machine Intelligence,2022

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