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Deep Learning Method Based Binary Descriptor for Object Detection

机译:基于深度学习方法的对象检测二进制描述符

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The wide applications of the object detection techniques in the domains like video surveillance, security, military, automated industry tasks, biometrics has attracted the interest of the researchers. Deep learning is one of the most effective and efficient techniques for the object detection nowadays and has brought quite a revolution in this field. This paper proposes CNN architecture for the extraction of compact binary descriptors using stacked convolutional auto encoders without labeled data. PASCAL and CALTECH standard object datasets are used to validate the experimental results. The results are presented in terms of recall and precision performance matrices. The results show that the proposed architecture using CNN outperforms the rest of the state-of the art descriptor of its class. The recall and precision for the CALTECH dataset for the proposed CNN architecture is 0.98 and 0.93 respectively.
机译:物体检测技术在视频监控,安全,军事,自动化行业任务等域中的广泛应用,生物识别技术引起了研究人员的兴趣。深度学习是现在对象检测最有效和最有效的技术之一,并且在这一领域带来了相当革命。本文提出了CNN架构,用于使用堆叠的卷积自动编码器提取紧凑型二元描述符,而无需标记数据。 Pascal和Caltech标准对象数据集用于验证实验结果。结果以召回和精密性能矩阵呈现。结果表明,所提出的架构使用CNN优于其类的艺术描述符的其余部分。所提出的CNN架构的CALTECH数据集的召回和精度分别为0.98和0.93。

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