Abstract

Recently, multi-level feature networks have been extensively used in instance segmentation. However, because not all features are beneficial to instance segmentation tasks, the performance of networks cannot be adequately improved by synthesizing multi-level convolutional features indiscriminately. In order to solve the problem, an attention-based feature pyramid module (AFPM) is proposed, which integrates the attention mechanism on the basis of a multi-level feature pyramid network to efficiently and pertinently extract the high-level semantic features and low-level spatial structure features; for instance, segmentation. Firstly, we adopt a convolutional block attention module (CBAM) into feature extraction, and sequentially generate attention maps which focus on instance-related features along the channel and spatial dimensions. Secondly, we build inter-dimensional dependencies through a convolutional triplet attention module (CTAM) in lateral attention connections, which is used to propagate a helpful semantic feature map and filter redundant informative features irrelevant to instance objects. Finally, we construct branches for feature enhancement to strengthen detailed information to boost the entire feature hierarchy of the network. The experimental results on the Cityscapes dataset manifest that the proposed module outperforms other excellent methods under different evaluation metrics and effectively upgrades the performance of the instance segmentation method.

Highlights

  • Object instance segmentation [1] is one of the most challenging tasks in computer vision, which needs to locate the object position in the image, classify it, and segment the pixels accurately [2]

  • We show the result of instance on the Cityscapes we show the resultsegmentation of instance segmentation on the Cityscapes validation set

  • In validation the SOLOv2 the total loss function consists of category loss set.network, In the SOLOv2 network, the total loss function consists of and category loss mask loss

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Summary

Introduction

Object instance segmentation [1] is one of the most challenging tasks in computer vision, which needs to locate the object position in the image, classify it, and segment the pixels accurately [2]. The instance segmentation technology can be applied in many fields. In industrial robotics, instance segmentation algorithms can detect and segment parts in different backgrounds, improve the efficiency of automatic assembly and reduce labor cost. It can be used for tumor image segmentation, to carry diagnosis and for other aspects to assist the treatment of diseases in terms of intelligent medicine. In autonomous driving, instance segmentation technology can be applied to the perception system of automatic driving vehicles to detect and segment pedestrians, cars and objects in the driving environment, and it can provide data support for the decision-making of automatic driving vehicles. The instance segmentation methods can accomplish the segmentation of obstacles in the image captured by the vehicle camera so as to facilitate the subsequent estimation of its trajectory and ensure safe driving [3]

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