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2nd International Conference on Emerging Smart Technologies and Applications, eSmarTA 2022 ; 2022.
Article in English | Scopus | ID: covidwho-2136164

ABSTRACT

The aim of this project is to construct portable smart farming management tools that could be helpful for the farmer involved in the pineapple industry. The project also aims to focus on the productivity of the plant by varying the fertilizer contents. During the Covid-19 pandemic that impacts all industries especially the agriculture industry, the farmers had an issue related to precision in terms of monitoring the soil condition of their crops due to limitations on the mobility of people across borders and lockdowns are contributing to labor shortages. Therefore, this study expected to look at the possibilities of the Smart Farming Management Tool Internet-of-Things based to be implemented in helping farmers to keep on track of the soil conditions in their crops via smartphones. © 2022 IEEE.

2.
13th International Conference on Intelligent Human Computer Interaction, IHCI 2021 ; 13184 LNCS:597-609, 2022.
Article in English | Scopus | ID: covidwho-1782740

ABSTRACT

The COVID-19 outbreak has posed a severe healthcare concern in Malaysia. Wearing a mask is the most effective way to prevent infections. However, some Malaysians refuse to wear a face mask for a variety of reasons. This work proposes a real-time face and face mask detection method using image processing technique to promote wearing face mask. Haar Cascade is used for the face detection to extract the features of the human faces as a method of approach. On the other hand, the face mask detection utilizes convolutional neural network (CNN) to train a model using the MobileNetV2 training model designed using Python, Keras and Tensorflow. OpenCV package was used as the interface for the algorithms to be connected to a web camera. Based on the performance metric calculation of detection rate analysis of the experimental results, the face detection rate is at 90% true and 10% false detection, which shows very good detection rate. Furthermore, the training accuracy and validation accuracy for the face mask detector are efficiently near to 1.0, proving a steady accuracy over the time. Training loss and validation loss are almost near to zero and decreasing over time, reassuring the algorithm performance is accurate and efficient for a datasets of 4000 images. © 2022, Springer Nature Switzerland AG.

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