Learning Near-Optimal Cost-Sensitive Decision Policy for Object Detection

被引:4
|
作者
Wu, Tianfu [1 ]
Zhu, Song-Chun [1 ]
机构
[1] Univ Calif Los Angeles, Dept Stat, Los Angeles, CA 90095 USA
关键词
D O I
10.1109/ICCV.2013.98
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Many object detectors, such as AdaBoost, SVM and deformable part-based models (DPM), compute additive scoring functions at a large number of windows scanned over image pyramid, thus computational efficiency is an important consideration beside accuracy performance. In this paper, we present a framework of learning cost-sensitive decision policy which is a sequence of two-sided thresholds to execute early rejection or early acceptance based on the accumulative scores at each step. A decision policy is said to be optimal if it minimizes an empirical global risk function that sums over the loss of false negatives (FN) and false positives (FP), and the cost of computation. While the risk function is very complex due to high-order connections among the two-sided thresholds, we find its upper bound can be optimized by dynamic programming (DP) efficiently and thus say the learned policy is near-optimal. Given the loss of FN and FP and the cost in three numbers, our method can produce a policy on-the-fly for Adaboost, SVM and DPM. In experiments, we show that our decision policy outperforms state-of-the-art cascade methods significantly in terms of speed with similar accuracy performance.
引用
收藏
页码:753 / 760
页数:8
相关论文
共 50 条
  • [31] Test strategies for cost-sensitive decision trees
    Ling, Charles X.
    Sheng, Victor S.
    Yang, Qiang
    IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2006, 18 (08) : 1055 - 1067
  • [32] AutoDDL: Automatic Distributed Deep Learning With Near-Optimal Bandwidth Cost
    Chen, Jinfan
    Li, Shigang
    Guo, Ran
    Yuan, Jinhui
    Hoefler, Torsten
    IEEE TRANSACTIONS ON PARALLEL AND DISTRIBUTED SYSTEMS, 2024, 35 (08) : 1331 - 1344
  • [33] Roulette sampling for cost-sensitive learning
    Sheng, Victor S.
    Ling, Charles X.
    MACHINE LEARNING: ECML 2007, PROCEEDINGS, 2007, 4701 : 724 - +
  • [34] Cost-sensitive learning for defect escalation
    Sheng, Victor S.
    Gu, Bin
    Fang, Wei
    Wu, Jian
    KNOWLEDGE-BASED SYSTEMS, 2014, 66 : 146 - 155
  • [35] Robust SVM for Cost-Sensitive Learning
    Gan, Jiangzhang
    Li, Jiaye
    Xie, Yangcai
    NEURAL PROCESSING LETTERS, 2022, 54 (04) : 2737 - 2758
  • [36] A Cost-Sensitive Machine Learning Model With Multitask Learning for Intrusion Detection in IoT
    Telikani, Akbar
    Rudbardeh, Nima Esmi
    Soleymanpour, Shiva
    Shahbahrami, Asadollah
    Shen, Jun
    Gaydadjiev, Georgi
    Hassanpour, Reza
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2024, 20 (03) : 3880 - 3890
  • [37] Active learning for cost-sensitive classification
    Krishnamurthy, Akshay
    Agarwal, Alekh
    Huang, Tzu-Kuo
    Daumé Iii, Hal
    Langford, John
    Journal of Machine Learning Research, 2019, 20
  • [38] Cost-sensitive learning with neural networks
    Kukar, M
    Kononenko, I
    ECAI 1998: 13TH EUROPEAN CONFERENCE ON ARTIFICIAL INTELLIGENCE, PROCEEDINGS, 1998, : 445 - 449
  • [39] Cost-Sensitive Learning with Noisy Labels
    Natarajan, Nagarajan
    Dhillon, Inderjit S.
    Ravikumar, Pradeep
    Tewari, Ambuj
    JOURNAL OF MACHINE LEARNING RESEARCH, 2018, 18 : 1 - 33
  • [40] Merge reduction for cost-sensitive learning
    Zhang, Aiting
    Xu, Juan
    Chen, Wenbin
    Min, Fan
    Journal of Computational Information Systems, 2014, 10 (23): : 10093 - 10102