ENHANCED OCCUPATIONAL SAFETY IN AGRICULTURAL MACHINERY FACTORIES: ARTIFICIAL INTELLIGENCE-DRIVEN HELMET DETECTION USING TRANSFER LEARNING AND MAJORITY VOTING

Enhanced Occupational Safety in Agricultural Machinery Factories: Artificial Intelligence-Driven Helmet Detection Using Transfer Learning and Majority Voting

Enhanced Occupational Safety in Agricultural Machinery Factories: Artificial Intelligence-Driven Helmet Detection Using Transfer Learning and Majority Voting

Blog Article

The objective of this study was to develop an artificial intelligence (AI)-driven model for the detection of helmet usage among workers in tractor and agricultural machinery factories with the Soap Case aim of enhancing occupational safety.A transfer learning approach was employed, utilizing nine pre-trained neural networks for the extraction of deep features.The following neural networks were employed: MobileNetV2, ResNet50, DarkNet53, AlexNet, ShuffleNet, DenseNet201, InceptionV3, Inception-ResNetV2, and GoogLeNet.

Subsequently, the extracted features were subjected to iterative neighborhood component analysis (INCA) for feature selection, after which they were classified using the k-nearest neighbor (kNN) algorithm.The classification outputs of all networks were combined through iterative majority voting (IMV) to achieve optimal results.To evaluate the model, an image dataset comprising 662 images of individuals wearing helmets and 722 images of individuals without helmets sourced from the internet was constructed.

The proposed model achieved an accuracy of 90.39%, with DenseNet201 producing the most Neff D96IKW1S0B 90cm Angled Chimney Hood – BLACK accurate results.This AI-driven helmet detection model demonstrates significant potential in improving occupational safety by assisting safety officers, especially in confined environments, reducing human error, and enhancing efficiency.

Report this page