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An Expression Recognition Method on Robots Based on Mobilenet V2-SSD

机译:基于Mobilenet V2-SSD的机器人表情识别方法

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This paper adopts a combination of MobileNet and SSD method to recognize facial expressions, and then apply it to Nao robots. MobileNet is a lightweight deep network model for mobile devices. The standard convolution is decomposed by depthwise separable convolution to decompose the calculation and reduce the amount of computation. The SSD model evolves from the VGG16 model and maintains excellent object detection performance despite a sharp decrease in the number of parameters. This paper combines MobileNet V2 with SSD for expression recognition, which not only meets the real-time requirements, but also keeps high recognition accuracy. Since the robot's processor performance is limited, while the deep neural network can automatically extract the image feature for accurate classification, it is of great significance to use lightweight deep neural network to apply the real-time detection and recognition of the Nao robot.
机译:本文采用MobileNet和SSD相结合的方法来识别面部表情,然后将其应用于Nao机器人。 MobileNet是用于移动设备的轻型深度网络模型。标准卷积由深度可分离卷积分解,以分解计算并减少计算量。 SSD模型是从VGG16模型演变而来的,尽管参数数量急剧减少,但仍保持了出色的目标检测性能。本文结合MobileNet V2和SSD进行表情识别,不仅满足实时性要求,而且具有很高的识别精度。由于机器人的处理器性能受到限制,而深度神经网络可以自动提取图像特征以进行准确分类,因此使用轻量级的深度神经网络对Nao机器人进行实时检测和识别具有重要意义。

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