Semantic segmentation network stacking with genetic programming

被引:0
|
作者
Illya Bakurov
Marco Buzzelli
Raimondo Schettini
Mauro Castelli
Leonardo Vanneschi
机构
[1] Universidade Nova de Lisboa,Information Management School
[2] Michigan State University, BEACON Center of Evolution in Action
[3] Michigan State University, Department of Computer Science and Engineering
[4] University of Milano – Bicocca,Department of Informatics, Systems and Communication
关键词
Genetic programming; Stacking; Semantic segmentation; Ensemble learning; Deep learning;
D O I
暂无
中图分类号
学科分类号
摘要
Semantic segmentation consists of classifying each pixel of an image and constitutes an essential step towards scene recognition and understanding. Deep convolutional encoder–decoder neural networks now constitute state-of-the-art methods in the field of semantic segmentation. The problem of street scenes’ segmentation for automotive applications constitutes an important application field of such networks and introduces a set of imperative exigencies. Since the models need to be executed on self-driving vehicles to make fast decisions in response to a constantly changing environment, they are not only expected to operate reliably but also to process the input images rapidly. In this paper, we explore genetic programming (GP) as a meta-model that combines four different efficiency-oriented networks for the analysis of urban scenes. Notably, we present and examine two approaches. In the first approach, we represent solutions as GP trees that combine networks’ outputs such that each output class’s prediction is obtained through the same meta-model. In the second approach, we propose representing solutions as lists of GP trees, each designed to provide a unique meta-model for a given target class. The main objective is to develop efficient and accurate combination models that could be easily interpreted, therefore allowing gathering some hints on how to improve the existing networks. The experiments performed on the Cityscapes dataset of urban scene images with semantic pixel-wise annotations confirm the effectiveness of the proposed approach. Specifically, our best-performing models improve systems’ generalization ability by approximately 5% compared to traditional ensembles, 30% for the less performing state-of-the-art CNN and show competitive results with respect to state-of-the-art ensembles. Additionally, they are small in size, allow interpretability, and use fewer features due to GP’s automatic feature selection.
引用
收藏
相关论文
共 50 条
  • [11] Semantic Learning Machine: A Feedforward Neural Network Construction Algorithm Inspired by Geometric Semantic Genetic Programming
    Goncalves, Ivo
    Silva, Sara
    Fonseca, Carlos M.
    [J]. PROGRESS IN ARTIFICIAL INTELLIGENCE-BK, 2015, 9273 : 280 - 285
  • [12] Cellular geometric semantic genetic programming
    Bonin, Lorenzo
    Rovito, Luigi
    De Lorenzo, Andrea
    Manzoni, Luca
    [J]. GENETIC PROGRAMMING AND EVOLVABLE MACHINES, 2024, 25 (01)
  • [13] Semantic schema theory for genetic programming
    Zojaji, Zahra
    Ebadzadeh, Mohammad Mehdi
    [J]. APPLIED INTELLIGENCE, 2016, 44 (01) : 67 - 87
  • [14] A survey of semantic methods in genetic programming
    Vanneschi, Leonardo
    Castelli, Mauro
    Silva, Sara
    [J]. GENETIC PROGRAMMING AND EVOLVABLE MACHINES, 2014, 15 (02) : 195 - 214
  • [15] Semantic Genetic Programming for Sentiment Analysis
    Graff, Mario
    Tellez, Eric S.
    Jair Escalante, Hugo
    Miranda-Jimenez, Sabino
    [J]. NEO 2015, 2017, 663 : 43 - 65
  • [16] A survey of semantic methods in genetic programming
    Leonardo Vanneschi
    Mauro Castelli
    Sara Silva
    [J]. Genetic Programming and Evolvable Machines, 2014, 15 : 195 - 214
  • [17] Semantic building blocks in genetic programming
    McPhee, Nicholas Freitag
    Ohs, Brian
    Hutchison, Tyler
    [J]. GENETIC PROGRAMMING, PROCEEDINGS, 2008, 4971 : 134 - +
  • [18] Semantic schema theory for genetic programming
    Zahra Zojaji
    Mohammad Mehdi Ebadzadeh
    [J]. Applied Intelligence, 2016, 44 : 67 - 87
  • [19] Genetic programming with semantic equivalence classes
    Ruberto, Stefano
    Vanneschi, Leonardo
    Castelli, Mauro
    [J]. SWARM AND EVOLUTIONARY COMPUTATION, 2019, 44 : 453 - 469
  • [20] An Introduction to Geometric Semantic Genetic Programming
    Vanneschi, Leonardo
    [J]. NEO 2015, 2017, 663 : 3 - 42