基于fpga的生菜特征提取传感器

Maverick Jonas G. Adonis, R. Forteza, A. Ramos, A. Alvarez, M. T. D. Leon, J. Hizon, Maria Patricia Rouelli Sabino-Santos, Christopher G. Santos, M. Rosales
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引用次数: 0

摘要

提出了一种基于ARTY A7-35T FPGA平台的生菜表型特征提取方法。图像采集是通过将OV7670 CMOS相机与FPGA连接,并将图像数据保存在DDR3存储器上完成的。图像处理技术首先涉及色彩模型转换以增强饱和度。然后,在图像的绿色通道上使用阈值,将二值化作为背景识别的初始步骤。为了构建前景的实体图形,实现了形态学变换。然后,将前景白色像素的像素数作为莴苣冠层面积计算的参数。FPGA实现消耗了所选FPGA板总LUTs资源的85.89%,与MATLAB基准测试相比,计算的冠层面积值误差低至1.28%。功耗高达1.73W,从图像采集到冠层面积值的总计算延迟为596.51 ms。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FPGA-based Features Extraction Sensor for Lettuce Crop
A method for extracting lettuce phenotypic features using an ARTY A7-35T FPGA platform is proposed. Image acquisition is done by interfacing an OV7670 CMOS camera with FPGA and saving image data on DDR3 memory. The image processing techniques firstly involve color model conversion for saturation enhancement. Then, binarization is done as an initial step in background discrimination, using a threshold value on the green channel of image. To construct a solid figure for foreground, morphological transformations are implemented. Then, pixel count of foreground white pixels are used as an argument in the computation of lettuce canopy area. The FPGA implementation consumes 85.89% of total LUTs resources of the chosen FPGA board with errors as low as 1.28% on the computed canopy area value compared with a MATLAB benchmark. Power consumption reached up to 1.73W, with a total calculated latency of 596.51 ms from image acquisition to canopy area value.
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