ODDS: Real-Time Object Detection Using Depth Sensors on Embedded GPUs

Niluthpol Chowdhury Mithun, Sirajum Munir, Karen Guo, Charles Shelton
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引用次数: 14

Abstract

Detecting objects that are carried when someone enters or exits a room is very useful for a wide range of smart building applications including safety, security, and energy efficiency. While there has been a significant amount of work on object recognition using large-scale RGB image datasets, RGB cameras are too privacy invasive in many smart building applications and they work poorly in the dark. Additionally, deep object detection networks require powerful and expensive GPUs. We propose a novel system that we call ODDS (Object Detector using a Depth Sensor) that can detect objects in real-time using only raw depth data on an embedded GPU, e.g., NVIDIA Jetson TX1. Hence, our solution is significantly less privacy invasive (even if the sensor is compromised) and less expensive, while maintaining a comparable accuracy with state of the art solutions. Specifically, we resort to training a deep convolutional neural network using raw depth images, with curriculum based learning to improve accuracy by considering the complexity and imbalance in object classes and developing a sparse coding based technique that speeds up the system ~2x with minimal loss of accuracy. Based on a complete implementation and real-world evaluation, we see ODDS achieve 80.14% mean average precision in object detection in real-time (5-6 FPS) on a Jetson TX1.
几率:在嵌入式gpu上使用深度传感器进行实时目标检测
当有人进入或离开房间时,检测携带的物体对于广泛的智能建筑应用非常有用,包括安全,安保和能源效率。虽然在使用大规模RGB图像数据集进行物体识别方面已经有了大量的工作,但RGB相机在许多智能建筑应用中过于侵犯隐私,而且在黑暗中表现不佳。此外,深度目标检测网络需要强大而昂贵的gpu。我们提出了一种新的系统,我们称之为ODDS(使用深度传感器的对象检测器),它可以仅使用嵌入式GPU(例如NVIDIA Jetson TX1)上的原始深度数据实时检测对象。因此,我们的解决方案大大减少了隐私侵犯(即使传感器受到损害),而且成本更低,同时保持了与最先进解决方案相当的准确性。具体来说,我们使用原始深度图像来训练一个深度卷积神经网络,通过基于课程的学习来提高准确性,通过考虑对象类的复杂性和不平衡性,并开发一种基于稀疏编码的技术,以最小的准确性损失将系统速度提高到2倍。基于完整的实现和现实世界的评估,我们看到在Jetson TX1上,实时目标检测(5-6 FPS)的ODDS平均精度达到80.14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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