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Bio-Inspired Hybrid Framework for Multi-view Face Detection

机译:受生物启发的用于多视图面部检测的混合框架

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Reliable face detection in completely uncontrolled settings still remains a challenging task. This paper introduces a novel hybrid learning strategy that achieves robust in-plane and out-of-plane multi-view face detection through the enhanced implementation of the hierarchical bio-inspired HMAX framework using spiking neurons. Through multiple training trials, separate pools of neurons are trained on different face poses to extract features through feed-forward unsu-pervised STDP. The trained neurons are then processed by an additional STOP mechanism to generate a streamlined repository of broadly tuned multi-view neurons. After unsupervised feature extraction, supervised feature selection is implemented within the hybrid framework to reduce false positives. The hybrid system achieves robust invariant detection of in-plane and out-of-plane rotated faces that compares favourably with state-of-the-art face detection systems.
机译:在完全不受控制的环境中进行可靠的人脸检测仍然是一项艰巨的任务。本文介绍了一种新颖的混合学习策略,该策略通过使用尖峰神经元增强层次化生物启发式HMAX框架的实现,实现了鲁棒的平面内和平面外多视图人脸检测。通过多次训练试验,对不同脸部姿势的神经元池进行了训练,以通过前馈未监督的STDP提取特征。然后,通过附加的STOP机制处理受过训练的神经元,以生成广泛调谐的多视图神经元的简化存储库。在无监督的特征提取之后,在混合框架内实施有监督的特征选择以减少误报。混合系统实现了平面内和平面外旋转面部的鲁棒不变检测,与最新的面部检测系统相比具有优势。

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