Autonomous fish tracking by ROV using Monocular Camera

Jun Zhou, C. Clark
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引用次数: 32

Abstract

This paper concerns the autonomous tracking of fish using a Remotely Operated Vehicle (ROV) equipped with a single camera. An efficient image processing algorithm is presented that enables pose estimation of a particular species of fish - a Large Mouth Bass. The algorithm uses a series of filters including the Gabor filter for texture, projection segmentation, and geometrical shape feature extraction to find the fishes distinctive dark lines that mark the body and tail. Feature based scaling then produces the position and orientation of the fish relative to the ROV. By implementing this algorithm on each frame of a series of video frames, successive relative state estimates can be obtained which are fused across time via a Kalman Filter. Video taken from a VideoRay MicroROV operating within Paradise Lake, Ontario, Canada was used to demonstrate off-line fish state estimation. In the future, this approach will be integrated within a closed-loop controller that allows the robot to autonomously follow the fish and monitor its behavior.
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基于单目摄像机的ROV自主跟踪鱼类
本文研究了一种配备单摄像头的遥控机器人(ROV)对鱼类的自主跟踪。提出了一种有效的图像处理算法,能够对一种特殊的鱼类-大嘴鲈鱼进行姿态估计。该算法利用Gabor滤波器进行纹理、投影分割、几何形状特征提取等一系列滤波,找到鱼体和鱼尾的鲜明暗线。然后,基于特征的缩放生成鱼相对于ROV的位置和方向。通过对一系列视频帧的每一帧实现该算法,可以获得连续的相对状态估计,并通过卡尔曼滤波器进行时间融合。视频来自加拿大安大略省天堂湖的VideoRay MicroROV,用于演示离线鱼类状态估计。在未来,这种方法将集成在一个闭环控制器中,使机器人能够自主地跟踪鱼并监控其行为。
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