摘要
It is important for the autonomous system to understand environmental information.For the autonomous system,it is desirable to have a strong generalization ability to deal with different complex environmental information,as well as have high accuracy and quick inference speed.Network ensemble architecture is a good choice to improve network performance.However,it is unsuitable for real-time applications on the autonomous system.To tackle this problem,a new neural network ensemble named partial-shared ensemble network(PSENet)is presented.PSENet changes network ensemble architecture from parallel architecture to scatter architecture and merges multiple component networks together to accelerate the inference speed.To make component networks independent of each other,a training method is designed to train the network ensemble architecture.Experiments on Camvid and CIFAR-10 reveal that PSENet achieves quick inference speed while maintaining the ability of ensemble learning.In the real world,PSENet is deployed on the unmanned system and deals with vision tasks such as semantic segmentation and environmental prediction in different fields.
基金
supported by the National Key Research and Development Program of China under Grant 2019YFC1511401
the National Natural Science Foundation of China under Grant 62173038 and 61103157
Science Foundation for Young Scholars of Tobacco Research Institute of Chinese Academy of Agricultural Sciences under Grant 2021B05
Key Scientific and Tech-nological Research and Development Project of China National Tobacco Corporation under Grant 110202102007.