Hyperspectral Optical Property Instrumentation (HOPI) Laboratory, School of Engineering and Computing Sciences, Texas A&M University-Corpus Christi, 6300 Ocean Dr., Corpus Christi, TX 78412-5797, USA.
Center for Coastal Studies, Texas A&M University-Corpus Christi, 6300 Ocean Dr., Corpus Christi, TX 78412-5866, USA.
Sensors (Basel). 2013 Dec 19;14(1):1-21. doi: 10.3390/s140100001.
We investigated a lab-based hyperspectral imaging system's response from pure (single) and mixed (two) algal cultures containing known algae types and volumetric combinations to characterize the system's performance. The spectral response to volumetric changes in single and combinations of algal mixtures with known ratios were tested. Constrained linear spectral unmixing was applied to extract the algal content of the mixtures based on abundances that produced the lowest root mean square error. Percent prediction error was computed as the difference between actual percent volumetric content and abundances at minimum RMS error. Best prediction errors were computed as 0.4%, 0.4% and 6.3% for the mixed spectra from three independent experiments. The worst prediction errors were found as 5.6%, 5.4% and 13.4% for the same order of experiments. Additionally, Beer-Lambert's law was utilized to relate transmittance to different volumes of pure algal suspensions demonstrating linear logarithmic trends for optical property measurements.
我们研究了基于实验室的高光谱成像系统对含有已知藻类类型和体积组合的纯(单一)和混合(两种)藻类培养物的响应,以表征系统的性能。测试了单一和已知比例的藻类混合物组合的体积变化的光谱响应。应用约束线性光谱解混技术,根据产生最小均方根误差的丰度提取混合物中的藻类含量。预测误差百分比是通过实际体积百分比与均方根误差最小处的丰度之间的差异计算得出的。对于三个独立实验的混合光谱,最佳预测误差分别为 0.4%、0.4%和 6.3%。对于相同顺序的实验,最差的预测误差分别为 5.6%、5.4%和 13.4%。此外,利用比尔-朗伯定律将透射率与纯藻悬浮液的不同体积相关联,证明了光学性质测量的线性对数趋势。