SimpleNet:低性能设备中的危险目标检测神经网络

Jae-Sung Jeong
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引用次数: 0

摘要

虽然移动设备的普及在很多方面带来了便利,但由于行人全神贯注于智能手机,也导致了交通事故的增加。为了解决这一问题,本研究提出了一种允许减少层数的数据训练的网络。SimpleNet算法将目标分类过程简化为检测状态和未检测状态。为了优化给定设备的配置,在整个测试过程中调整了两个超参数,即重复参数和特征参数。测试结果表明,全尺寸SimpleNet的性能与深度神经网络相当。即使使用优化的超参数简化模型,SimpleNet的准确率也达到96.8%。我们期望该算法可以在低性能设备中实现,以检测街道上的危险物体。此外,我们预计这些设备的检测目标将更加有限,因为它们只能对周围环境具有有限的视觉
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SimpleNet: Hazardous-Object Detecting Neural Network in Low-Performance Devices
While the widespread of mobile devices has brought convenience in many aspects, it has also caused an increase in the number of traffic accidents due to pedestrians preoccupied with their smartphone devices. In order to solve such problem, this research proposes a network that allows training of data with reduced number of layers. SimpleNet algorithm simplifies the process of object classification into the states of detected or undetected. In order to optimize the configuration for a given device, two hyperparameters, Repeat Parameter and Feature Parameter, were adjusted throughout the testing. The test results show that the performance of full- size SimpleNet is comparable to that of Deep Neural Network. Even after reducing the model with optimized hyperparameters, SimpleNet exhibited an accuracy of 96.8%. We expect that this algorithm can be implemented in low-performance devices to detect hazardous objects on streets. Furthermore, we expect the detection target to be more limited for these devices in that they can only have a restricted vision of the surroundings
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