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Collaborative deep network model method for pedestrian detection

机译:深度检测的协同深度网络模型方法

摘要

A Collaborative Deep Network model method for pedestrian detection includes constructing a new collaborative multi-model learning framework to complete a classification process during pedestrian detection; and using an artificial neuron network to integrate judgment results of sub-classifiers in a collaborative model, and training the network by means of the method for machine learning, so that information fed back by sub-classifiers can be more effectively synthesized. A re-sampling method based on a K-means clustering algorithm can enhance the classification effect of each classifier in the collaborative model, and thus improves the overall classification effect. By building a collaborative deep network model, different types of training data sets obtained using a clustering algorithm are used for training a plurality of deep network models in parallel, and then classification results, on deep network models, of an original data set are integrated and comprehensively analyzed, which achieves more accurate sample classification.
机译:一种用于行人检测的协作深度网络模型方法,包括构造新的协作多模型学习框架以完成行人检测过程中的分类过程。利用人工神经元网络将子分类器的判断结果整合为一个协同模型,并通过机器学习的方法对网络进行训练,从而可以更有效地合成子分类器反馈的信息。基于K均值聚类算法的重采样方法可以增强协作模型中每个分类器的分类效果,从而提高整体分类效果。通过构建协作式深度网络模型,使用聚类算法获得的不同类型的训练数据集可用于并行训练多个深度网络模型,然后将原始数据集在深度网络模型上的分类结果集成并全面分析,可实现更准确的样品分类。

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