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Motion-Adaptive Image Capture in a Body-Worn Wearable Sensor

机译:穿戴式可穿戴传感器中的运动自适应图像捕获

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Any body-mounted wearable sensor that takes periodic pictures is susceptible to motion blur in the captured images. Motion blur may render images useless, and capture of these images consumes battery power. In this paper, an attempt is made to decrease the number of blurred images captured by an eyeglass-mounted camera and increase battery life of the device. The camera motion was detected using an onboard accelerometer and motion derived metrics were used to control image capture. A total of 825 images with corresponding accelerometer data were collected during 2.3 hours in different lighting conditions to train several capture models. Further 1564 images (4.3 hours) were used to test and compare the capture models. The performance of the best model was assessed in an independent experiment, where two devices, one taking pictures at a fixed frequency and one using the motion-adaptive capture were used to collect 650 images (1.8 hours). The motion-adaptive algorithm captured the same number of blur-free images, but reduced power consumption by 12%. The algorithm was found to perform better in the conditions with higher chances of motion blur e.g. in low lighting conditions.
机译:任何定期拍摄图像的可穿戴式传感器都容易在捕获的图像中出现运动模糊。运动模糊可能会使图像无用,并且捕获这些图像会消耗电池电量。在本文中,尝试减少安装在眼镜上的相机捕获的模糊图像的数量,并增加设备的电池寿命。使用机载加速计检测相机的运动,并使用运动衍生指标来控制图像捕获。在2.3小时内在不同光照条件下收集了825张具有相应加速度计数据的图像,以训练几种捕获模型。另外使用了1564张图像(4.3小时)来测试和比较捕获模型。在一个独立的实验中评估了最佳模型的性能,该实验使用了两种设备,一种以固定频率拍照,另一种使用运动自适应捕获设备收集650张图像(1.8小时)。自适应运动算法捕获了相同数量的无模糊图像,但功耗降低了12%。发现该算法在运动模糊机会较高的条件下(例如,在低光照条件下。

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