使用树莓派的视障人士便携式辅助系统

S. Lakshmanan, Divya B, N. K, Annamalai M, P. T, Sanju varshini T
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引用次数: 0

摘要

视力有问题的人很难识别超市里的临时产品。产品的形状、颜色、大小和重量各不相同,这对识别起着重要作用。该系统由图像处理模块和语音处理模块组成。利用一种有效的实时图像处理技术从捕获的图像中提取GLCM特征。不同的算法已经被训练和测试用于分类输入图像。选择支持向量机进行分类,分类准确率达到89.6%。提出的算法已经加载到树莓派v3中。可移植性被认为是这项工作的主要目标。提供备用电池,使个人携带设备在任何地方,可以在任何时间使用。为用户提供耳机,用户可以从耳机中听到产品名称的音频输出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Portable Assistive system for Visually Impaired using Raspberry Pi
People with problems in vision find it difficult to recognize the provisional products in the supermarket. The products vary in shape, color, size and weight, which play an important role in recognition. The proposed system consists of a module which will work on image processing and a separate module which works on voice processing. An effective real time image processing technique has been used to extract the GLCM features from the captured image. Different algorithms have been trained and tested for classifying the input image. SVM has been selected which gave a classification accuracy of 89.6%. Proposed algorithm has been loaded into Raspberry Pi v3. Portability has been considered as the major objective of the work. A battery backup was provided which made the individual to carry the device in whatever place and can use at any time. A headset is provided to the user from which he/she can hear the audio output of the product name.
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