Image analysis method to evaluate beak and head motion of broiler chickens during feeding (original) (raw)
Computers and Electronics in Agriculture, 2015
Abstract
ABSTRACT While feeding broiler chickens may exhibit different biomechanical movements in relation to the physical properties of feed such as size, shape and hardness. Furthermore, the chicken's anatomical features at various ages, genders and breeds in conjunction with feed type and feeder design parameters may also have an influence on biomechanical movement. To determine the significance of these parameters during feeding, kinematic measurements related to the biomechanical motions are required. However, determining this information manually from video by a human operator is tedious and prone to errors. The aim of this study was to develop a machine vision technique which visually identifies the relevant biome-chanical variables attributed to broiler feeding behaviour from high-speed video footages. A total of 369 frames from three broiler chicks of 5 days old were manually measured and compared to the automatic measurement. For each bird six mandibulations (i.e. a cycle of opening and closing the beak) were manually selected, which were two different sequences of three consecutive mandibulations starting right after a feed grasping. The kinematics variables considered were: (i) head displacement (eye centre position ; x-and y-axis); (ii) beak opening speed (given in mm ms À1); (iii) beak closing speed (measured in mm ms À1); (iv) beak opening acceleration (given in mm ms À2); and (v) beak closing acceleration (given in mm ms À2). Results indicated that the highest error for eye position detection was 1.05 mm for x-axis and 0.67 for the y-axis. The difference between manual and automatic (algorithm output) measurements for the beak gape was 0.22 ± 0.009 mm, in which the maximum difference was 0.76 mm. Regression analysis indicated that both measures are highly correlated (R 2 = 99.2%). Statistical tests suggested that the primary probably causes of error are the speed and acceleration of the beak motion (i.e. blurred image), as well as the presence of feed particles in the first and second mandibulations right after the feed grasping (i.e. occluded beak tips by feed particles). The presented method calculated automatically the position of the eye centre (x-and y-axis) and both upper and lower beak tips distance in a high level of accuracy, but the model can be improved by using a camera with higher resolution, a higher acquisition rate, and infrared-reflective markers. The method has the potential to facilitate efficient and repeatable acquisition of biomechanical data of broiler chickens during feeding, and be used to benchmark the feed physical properties and its processing methods, likewise evolving knowledge for futures studies in feeders' design.
Diego Fernandes Neves hasn't uploaded this paper.
Let Diego know you want this paper to be uploaded.
Ask for this paper to be uploaded.