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Classifier ensemble with incremental learning for disaster victim detection

机译:具有增量学习功能的分类器集成,可用于灾难受害者检测

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Human victim detection in an urban search and rescue scenario is challenging owing to the articulated nature and unpredictable position of the human body. This study investigates the effects of using an ensemble of classifiers (AdaBoost, k-NN and SVM) with a set of different feature types (HOG and SURF) on the human victim detection problem. The classifier ensemble uses both majority voting and a decision rule based on classification history to determine the outcome. A training dataset of 1590 simulated disaster images acquired for this study is used for training and the proposed approaches are evaluated via k-fold cross validation and through tests conducted on video data. The novelty of our approach lies in the incremental learning component that acquires domain knowledge and trains in parallel without interrupting the ongoing classification process. The system achieves over 69% accuracy in detecting human victims in images of a simulated disaster scenario.
机译:由于关节的性质和人体的不可预测性,在城市搜救场景中对人类受害者的检测具有挑战性。这项研究调查了使用具有一组不同特征类型(HOG和SURF)的分类器(AdaBoost,k-NN和SVM)对人类受害者检测问题的影响。分类器集成使用多数投票和基于分类历史的决策规则来确定结果。为本研究获得的1590张模拟灾难图像的训练数据集用于训练,并且通过k倍交叉验证和通过对视频数据进行测试来评估所提出的方法。我们方法的新颖之处在于增量学习组件,该组件获取领域知识并并行训练,而不会中断正在进行的分类过程。该系统在模拟灾难场景的图像中检测人类受害者的准确性达到69%以上。

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