Application to Pedestrian Detection and Object Detection

V. Swetha, K. Sushma, N. D. Praneetha, S. Mahesh
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Abstract

Automatic driving systems, object detection is essential. A logic of fusion presented combining the benefits of these two types detectors of objects, taking into account the properties of classical and deep learning techniques. Theoretically, a link between detection performance and detector type can be established. The numerical study to increase detection performance is based on the established theoretical relationship. In addition, an enhancement strategy is proposed that the designs of the sub-detectors are guided by this principle for improved overall performance. The utility of this combination methodology is illustrated in the identification of pedestrians using a trained by a machine on attribute the conventional detectors or human being. On the training datasets as well as additional different datasets to complete several comparative experiments using the classical and CNN detectors have been undertaken. It is a guarantee to improve detection performance and flexibility to different application settings with a simplified network.
在行人检测和物体检测中的应用
自动驾驶系统中,物体检测是必不可少的。一种融合逻辑结合了这两种类型的物体检测器的优点,同时考虑了经典和深度学习技术的特性。理论上,可以建立检测性能与检测器类型之间的联系。提高检测性能的数值研究是建立在理论关系的基础上的。此外,还提出了一种改进策略,即以该原理为指导设计子探测器,以提高整体性能。这种组合方法的实用性在使用机器对传统探测器或人类的属性进行训练的行人识别中得到了说明。在训练数据集以及其他不同的数据集上,使用经典检测器和CNN检测器完成了几个比较实验。这是在简化的网络环境下提高检测性能和适应不同应用设置的灵活性的保证。
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