Abstract
Deep learning algorithms can now be used to identify, locate, and count items in an image thanks to advancements in image processing technology. The successful application of image processing technology in different fields has attracted much attention in the field of agriculture in recent years. This research was done to ascertain the number of indigestible cereal grains in animal feces using an image processing method. In this study, a regression-based way of object counting was used to predict the number of cereal grains in the feces. For this purpose, we have developed two different neural network architectures based upon Fully Convolutional Regression Networks (FCRN) and U-Net. The images used in the study were obtained from three different dairy cows enterprises operating in Nigde Province. The dataset consists of the 277 distinct dropping images of dairy cows in the farm. According to findings of the study, both models yielded quite acceptable prediction accuracy with U-Net providing slightly better prediction with a MAE value of 16.69 in the best case, compared to 23.65 MAE value of FCRN with the same batch.
Reference47 articles.
1. Video-Based Vehicle Counting Framework;Dai;IEEE Access,2019
2. Wang, Y., and Zhang, X. (2018, January 12–14). Autonomous Garbage Detection for Intelligent Urban Management. Proceedings of the MATEC Web of Conferences, Shanghai, China.
3. Object Detection Using Deep Learning Methods in Traffic Scenarios;Boukerche;ACM Comput. Surv. (CSUR),2021
4. Target Heat-Map Network: An End-to-End Deep Network for Target Detection in Remote Sensing Images;Chen;Neurocomputing,2019
5. Choi, D., Lee, W.S., Schueller, J.K., Ehsani, R., Roka, F., and Diamond, J. (2017, January 16–19). A Performance Comparison of RGB, NIR, and Depth Images in Immature Citrus Detection Using Deep Learning Algorithms for Yield Prediction. Proceedings of the ASABE Annual International Meeting, Spokane, WA, USA.