ChickenSense: A Low-Cost Deep Learning-Based Solution for Poultry Feed Consumption Monitoring Using Sound Technology

Ahmad Amirivojdan, A. Nasiri, Shengyu Zhou, Yang Zhao, H. Gan
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Abstract

This research proposes a low-cost system consisting of a hardware setup and a deep learning-based model to estimate broiler chickens’ feed intake, utilizing audio signals captured by piezoelectric sensors. The signals were recorded 24/7 for 19 consecutive days. A subset of the raw data was chosen, and events were labeled in two classes, feed-pecking and non-pecking (including singing, anomaly, and silence samples). Next, the labeled data were preprocessed through a noise removal algorithm and a band-pass filter. Then, the spectrogram and the signal envelope were extracted from each signal and fed as inputs to a VGG-16-based convolutional neural network (CNN) with two branches for 1D and 2D feature extraction followed by a binary classification head to classify feed-pecking and non-pecking events. The model achieved 92% accuracy in feed-pecking vs. non-pecking events classification with an f1-score of 91%. Finally, the entire raw dataset was processed utilizing the developed model, and the resulting feed intake estimation was compared with the ground truth data from scale measures. The estimated feed consumption showed an 8 ± 7% mean percent error on daily feed intake estimation with a 71% R2 score and 85% Pearson product moment correlation coefficient (PPMCC) on hourly intake estimation. The results demonstrate that the proposed system estimates broiler feed intake at each feeder and has the potential to be implemented in commercial farms.
ChickenSense:利用声音技术监测家禽饲料消耗量的低成本深度学习解决方案
本研究提出了一种低成本系统,由硬件装置和基于深度学习的模型组成,利用压电传感器捕获的音频信号估算肉鸡的采食量。连续 19 天全天候记录信号。选择原始数据的一个子集,将事件标记为两类:啄饲料和非啄饲料(包括唱歌、异常和沉默样本)。然后,通过去噪算法和带通滤波器对标记数据进行预处理。然后,从每个信号中提取频谱图和信号包络线,作为输入输入到基于 VGG-16 的卷积神经网络(CNN),CNN 有两个分支,分别用于一维和二维特征提取,然后通过二元分类头对 "啄食 "和 "非啄食 "事件进行分类。该模型在馈电啄食与非啄食事件分类方面的准确率达到 92%,f1 分数为 91%。最后,利用所开发的模型对整个原始数据集进行了处理,并将由此得出的采食量估计值与秤量的地面实况数据进行了比较。估算的饲料消耗量显示,日采食量估算的平均百分比误差为 8 ± 7%,R2 得分为 71%,每小时采食量估算的皮尔逊积矩相关系数(PPMCC)为 85%。结果表明,所提出的系统可以估算每个饲喂器的肉鸡采食量,并有可能在商业农场中实施。
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