基于深度学习的道路安全动物检测

Sanjay Santhanam, Sudhir Sidhaarthan B, Sai Sudha Panigrahi, Suryakanta Kashyap, Bhargav Krishna Duriseti
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引用次数: 6

摘要

多年来,由于动物在意外时刻过马路造成的事故仍然是道路死亡的一个重要原因。靠近森林的道路又黑又密;因此,司机无法清楚地看到动物。卡车司机面临盲区问题。本文提出了一种能够有效检测动物并向驾驶员报警的模型。使用机器学习-一种深度学习算法,我们正在一个庞大的开源数据集的帮助下分离动物。使用卷积神经网络,该模型将预测从实时摄像机接收到的每一帧图像的对象。如果机器将一个物体标记为动物,系统会发出3秒的警报,让司机意识到正在接近的动物。由于数据集是开源的,这个模型并没有停止使用少数动物,动物检测的种类不断增加。该模型的准确率为91%。
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Animal Detection for Road safety using Deep Learning
Over the years, Accidents due to animals crossing the road at unexpected moments have still been a significant cause of road death. Roads near the forest are dark and dense; hence drivers cannot spot the animals clear. Truck drivers face issues due to blindspot regions. This paper proposes a model that can efficiently detect the animals and alarm the driver. Using Machine learning - A deep learning algorithm, we are segregating the animals with the help of a vast open-source dataset. Using convolution neural networks, the model will predict the object for every image frame received from the Live Camera. If the machine marks an object as an animal, the system gives an alert of 3 seconds to make the driver conscious about the approaching animal. This model doesn't stop with few animals as the dataset is open-sourced the variety of animals detection keep increasing. The model gives 91% accuracy.
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