Sensors, Free Full-Text

By A Mystery Man Writer

Pig weight and body size are important indicators for producers. Due to the increasing scale of pig farms, it is increasingly difficult for farmers to quickly and automatically obtain pig weight and body size. Due to this problem, we focused on a multiple output regression convolutional neural network (CNN) to estimate pig weight and body size. DenseNet201, ResNet152 V2, Xception and MobileNet V2 were modified into multiple output regression CNNs and trained on modeling data. By comparing the estimated performance of each model on test data, modified Xception was selected as the optimal estimation model. Based on pig height, body shape, and contour, the mean absolute error (MAE) of the model to estimate body weight (BW), shoulder width (SW), shoulder height (SH), hip width (HW), hip width (HH), and body length (BL) were 1.16 kg, 0.33 cm, 1.23 cm, 0.38 cm, 0.66 cm, and 0.75 cm, respectively. The coefficient of determination (R2) value between the estimated and measured results was in the range of 0.9879–0.9973. Combined with the LabVIEW software development platform, this method can estimate pig weight and body size accurately, quickly, and automatically. This work contributes to the automatic management of pig farms.

Sensors & Diagnostics journal

Smart Thermostats & Smart Home Devices

Advanced Sensor Research - Wiley Online Library

Sensors, Free Full-Text, pct-off 70-90

Sensors, Free Full-Text, red engine spoofer

Random Nerd Tutorials Learn ESP32, ESP8266, Arduino, and

Force Sensor Types, Free Sensor Study Guide

Sensors, Free Full-Text, bldc motor

Sensors for Pressure Mapping and Force Measurement

Free Sensors eBooks

Sensors, Free Full-Text, rule 63 urban dictionary

Air Intake Pressure Sensor,MAP Sensor 079800-3000

How Dexcom G7 Continuous Glucose Monitoring Works

Sensors, Free Full-Text, bldc motor

PDF) Sensors, Free Full-Text

©2016-2024, changhanna.com, Inc. or its affiliates