植物监测中自然颜色检索的注意机制方法

Y. Chadavadh, T. Kasetkasem, T. Patrapornnant, Sirichai Parittotakapron, T. Isshiki
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引用次数: 0

摘要

尽管农业实践在现代技术的支持下不断发展,但还可以做出更多改进,以提高农业技术和商业。其中一项技术是利用特定的光色组合来优化植物的生长速度。一个明显的缺点是植物的颜色会根据光的颜色组合而变化。浅色会欺骗人的眼睛,并可能在监测植物异常时造成错误。利用白色光源对非自然色彩的植物图像进行色彩校正,以恢复植物的自然色彩。我们的色彩校正方法使用了自点积注意、多头注意和通道注意的应用,并结合了基于u - net的模型。该方法分两步对输入图像进行RGB色彩空间的色彩校正。首先,全局变换网络提供全局函数,从每个像素映射输入的RGB颜色向量,并产生校正后的RGB颜色向量。全局映射函数对图像中的所有像素都是相同的。其次,局部变换网络试图纠正局部颜色失真,如由于交流电源导致的LED灯闪烁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Attention Mechanism Approach for Natural Color Retrieval for Plant Monitoring
Even though agriculture practices have been continuously developed with the support of modern technologies, many more improvements can be made to enhance agricultural technologies and businesses. One such technology is the use of specific light color combinations to optimize the growth rate of plants. One obvious drawback is that plants’ color will change according to the light color combinations. The light color can fool human eyes and may cause errors when monitoring for plant anomalies. Color correction methods should be applied to help restore the natural plant color with the white light source from the unnaturally colored plant images. Our color correction method uses an application of self-dot-product attention, multi-head attention, and channel attention combined with a U-Net-based model. This proposed method performs the color correction with the input image in the RGB color space in two steps. First, a global transformation network provides the global function that maps the input RGB color vectors from every pixel and produces the corrected RGB color vectors. The global mapping function is the same for all pixels in the image. Next, a local transformation network attempts to correct the local color distortions such as light the flickering of LED light due to the AC power supplier.
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