An Upgraded Object Detection Model for Enhanced Perception and Decision Making in Autonomous Vehicles

Oshin Rawlley, Shashank Gupta
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引用次数: 1

Abstract

In Internet of Vehicles (IoV), accurate object detection is one of the basic requirements for Autonomous Vehicles (AV s) and Vision-based Self Driver Assistance System (VSDAS). With restricted processing power of sensor nodes and network bandwidth, enhanced object detection with low energy consumption and acceptable rate of accuracy is still a major issue that makes VSDAS untrust-worthy and unsustainable. Considering this situation, in this paper, the authors propose an upgraded Object Detection model for simulating the enhanced perception and decision making in autonomous vehicles. In this paper, we evaluate the performance of three methods namely Histogram of Ori-ented Gradients (HOG), Local Binary Pattern (LBP), HAAR utilizing KITTI dataset. The results reveal that Haar exhibits higher detection rate than the other two methods. For the enhanced object detection, we utilize a frame similarity difference technique for filtering out the duplicate frames and generating key frames. Finally, an upgraded Haar-cascade classification algorithm is proposed for accurate and fast object detection. Our comprehensive experimental outcomes on the eminent publicly available dataset (KITTI) showed that our model not only significantly improves the performance of object detection however, also saves the energy consumption of edee devices.
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一种改进的自动驾驶车辆感知与决策目标检测模型
在车联网(IoV)中,准确的目标检测是自动驾驶汽车(AV)和基于视觉的自动驾驶辅助系统(VSDAS)的基本要求之一。在传感器节点处理能力和网络带宽有限的情况下,以低能耗和可接受的准确率增强目标检测仍然是VSDAS不值得信任和不可持续的主要问题。考虑到这种情况,本文提出了一种升级的目标检测模型,用于模拟自动驾驶汽车增强的感知和决策。本文利用KITTI数据集,对定向梯度直方图(HOG)、局部二值模式(LBP)和HAAR三种方法的性能进行了评价。结果表明,Haar方法的检出率高于其他两种方法。对于增强的目标检测,我们利用帧相似度差分技术过滤掉重复帧并生成关键帧。最后,提出了一种改进的haar级联分类算法,以实现准确、快速的目标检测。我们在著名的公共数据集(KITTI)上的综合实验结果表明,我们的模型不仅显著提高了目标检测的性能,而且还节省了edee设备的能耗。
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Performance Analysis of a Bistatic Joint Sensing and Communication System An Upgraded Object Detection Model for Enhanced Perception and Decision Making in Autonomous Vehicles Demo: Low-power Communications Based on RIS and AI for 6G Demo: Deterministic Radio Propagation Simulation for Integrated Communication Systems in Multimodal Intelligent Transportation Scenarios Energy Efficient Distributed Learning in Integrated Fog-Cloud Computing Enabled IoT Networks
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