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This study examined the behavioral responses of Nile Tilapia (Oreochromis niloticus), a key aquaculture species, to ammonia stress using non-invasive image processing techniques. The experiment was conducted under controlled laboratory conditions and involved four groups exposed to ammonium chloride concentrations (0, 100, 200, and 400 mg·lt−1). Movement trajectories of individual fish were recorded over 10 h using high-resolution cameras positioned above and beside glass tanks. Images were processed with the Optical Flow Farneback algorithm in Python, implemented in Visual Studio Code with OpenCV and NumPy libraries, achieving a 91.40% accuracy rate in tracking fish positions. The results revealed that increasing ammonia levels restricted movement areas while elevating movement irregularity and activity. The 0 mg·lt−1 group utilized the glass tank homogeneously, covering 477 m. In contrast, the 100 mg·lt−1 group showed clustering in specific areas (796 m). At 200 mg·lt−1, clustering intensified, particularly along the glass tank’s left edge (744 m), and at 400 mg·lt−1, fish exhibited severe restriction near the water surface with markedly increased activity (928 m). Statistical analyses using Kruskal–Wallis and Dunn tests confirmed significant differences between the 400 mg·lt−1 group and others. No difference was observed between the 0 mg·lt−1 and 100 mg·lt−1 group, indicating tolerance to lower concentrations. The study highlights the importance of ammonia levels in water quality management and reveals the potential of image processing techniques for automation and stress monitoring in aquaculture.
Details
Quality management;
Behavior;
Software;
Ammonium;
Optical flow (image analysis);
Aquaculture;
Image processing;
Water quality;
Automation;
Statistical analysis;
Ammonium chloride;
Fish;
Tilapia;
Cameras;
Clustering;
Ammonia;
Water quality management;
Algorithms;
Visual programming languages;
Oreochromis niloticus
; Güray, Tonguç 2
; Balci, Beytullah Ahmet 3 ; Sari Tuba 2
1 Department of Aquaculture, Faculty of Fisheries, Recep Tayyip Erdoğan University, Rize 53100, Türkiye; [email protected]
2 Department of Management Information Systems, Faculty of Applied Sciences, Akdeniz University, Antalya 07070, Türkiye; [email protected] (G.T.); [email protected] (T.S.)
3 Department of Aquaculture, Faculty of Fisheries, Akdeniz University, Antalya 07070, Türkiye