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Indoor objects detection and recognition for an ICT mobility assistance of visually impaired people

机译:室内物体检测和识别视障人士的ICT移动性援助

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摘要

Indoor object detection in real scene presents a challenging computer vision task; it is also a key component of an ICT autonomous displacement assistance of Visually Impaired People (VTP). To handle this challenge, a DCNN (Deep Convolutional Neural Networks) for indoor object detection and a new indoor dataset are proposed. The novel DCNN design is based on a pre-trained DCNN called YOLO v3. In order to train and test the proposed DCNN, a new dataset for indoor objects was created. The images of the new dataset present large variety of objects, of indoor illuminations and of indoor architectural structures potentially unsafe for a VIP independent mobility. The dataset contains about 8000 images and presents 16 indoor object categories. Experimental results prove the high performance of the proposed indoor object detection as its recognition rate (a mean average precision) is 73,19%.
机译:实际场景中的室内对象检测提出了一个充满挑战的计算机视觉任务;它也是视障人士(VTP)的ICT自主位移辅助的关键组成部分。为了处理这一挑战,提出了一种用于室内物体检测和新的室内数据集的DCNN(深卷积神经网络)。新型DCNN设计基于称为YOLO V3的预训练DCNN。为了培训和测试所提出的DCNN,创建了一个用于室内对象的新数据集。新数据集的图像显示了各种各样的物体,室内照明和室内架构结构可能不安全地不安全地不安全。数据集包含大约8000个图像并呈现16个室内对象类别。实验结果证明了所提出的室内物体检测的高性能,因为其识别率(平均平均精度)为73,19%。

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