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Human Activity Recognition using Visual Object Detection

机译:使用视觉对象检测的人类活动识别

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Visual Human Activity Recognition (HAR), by means of an object detection algorithm, can be used to localize and monitor the states of people with little to no obstruction. The purpose of this paper is to discuss a way to train a model that has the ability to localize and capture the states of underground miners using a Single Shot Detector (SSD) model, trained specifically to make a distinction between an injured and a non- injured miner (lying down vs standing up). Tensorflow is used for the abstraction layer of implementing the machine learning algorithm, and although it uses Python to deal with nodes and tensors, the actual algorithms run on C++ libraries, providing a good balance between performance and speed of development. The paper further discusses evaluation methods for determining the accuracy of the machine-learning progress. For future work, data fusion is introduced in order to improve the accuracy of the detected activity/state of people in a mining environment.
机译:通过对象检测算法,视觉人类活动识别(HAR)可用于定位和监视几乎没有障碍的人的状态。本文的目的是讨论一种训练模型的方法,该模型具有使用单发检测器(SSD)模型定位和捕获地下矿工状态的能力,该模型经过专门训练以区分受伤者和非受伤者。受伤的矿工(躺下vs站起来)。 Tensorflow用于实现机器学习算法的抽象层,尽管它使用Python处理节点和张量,但实际算法在C ++库上运行,从而在性能和开发速度之间实现了良好的平衡。本文还讨论了用于确定机器学习进度准确性的评估方法。对于将来的工作,引入了数据融合以提高在采矿环境中检测到的人员活动/状态的准确性。

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