Sci-Eye Pty Ltd., Goonellabah, NSW 2480, Australia.
School of Computer Science and Engineering, UNSW Sydney, Sydney, NSW 2052, Australia.
Sensors (Basel). 2023 Nov 15;23(22):9193. doi: 10.3390/s23229193.
Monitoring marine fauna is essential for mitigating the effects of disturbances in the marine environment, as well as reducing the risk of negative interactions between humans and marine life. Drone-based aerial surveys have become popular for detecting and estimating the abundance of large marine fauna. However, sightability errors, which affect detection reliability, are still apparent. This study tested the utility of spectral filtering for improving the reliability of marine fauna detections from drone-based monitoring. A series of drone-based survey flights were conducted using three identical RGB (red-green-blue channel) cameras with treatments: (i) control (RGB), (ii) spectrally filtered with a narrow 'green' bandpass filter (transmission between 525 and 550 nm), and, (iii) spectrally filtered with a polarising filter. Video data from nine flights comprising dolphin groups were analysed using a machine learning approach, whereby ground-truth detections were manually created and compared to AI-generated detections. The results showed that spectral filtering decreased the reliability of detecting submerged fauna compared to standard unfiltered RGB cameras. Although the majority of visible contrast between a submerged marine animal and surrounding seawater (in our study, sites along coastal beaches in eastern Australia) is known to occur between 515-554 nm, isolating the colour input to an RGB sensor does not improve detection reliability due to a decrease in the signal to noise ratio, which affects the reliability of detections.
监测海洋动物对于减轻海洋环境干扰的影响以及减少人类与海洋生物之间负面相互作用的风险至关重要。基于无人机的航空调查已成为检测和估计大型海洋动物丰度的流行方法。然而,影响检测可靠性的可见性误差仍然很明显。本研究测试了光谱滤波在提高基于无人机监测的海洋动物检测可靠性方面的效用。使用三个具有相同 RGB(红-绿-蓝通道)相机进行了一系列基于无人机的调查飞行,处理方法如下:(i) 对照(RGB),(ii) 用窄带“绿色”带通滤光片(525 至 550nm 之间的透射)进行光谱滤波,以及 (iii) 用偏光滤光片进行光谱滤波。使用机器学习方法分析了九次包含海豚群的飞行视频数据,其中通过手动创建地面真实检测并与 AI 生成的检测进行比较。结果表明,与标准未过滤的 RGB 相机相比,光谱滤波降低了对水下动物的检测可靠性。尽管在我们的研究中,已知在沿海海滩(澳大利亚东部)等地点,水下海洋动物与周围海水之间的可见对比度大部分发生在 515-554nm 之间,但将 RGB 传感器的颜色输入隔离并不会由于信噪比降低而提高检测可靠性,这会影响检测的可靠性。