Browsing by Author "Weerasinghe, L."
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Publication Embargo CEYLAGRO: INFORMATION TECHNOLOGICAL APPROACH FOR AN OPTIMIZED AND CENTRALIZED AGRICULITURE PLATFORM(2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT, 2020-12-10) Kaushalya, T.V.H.; Wijewardana, B.Y.S.; Karunasena, A.; Kavishika, M.G.G.; Gamage, S.T.A; Weerasinghe, L.Sri Lankan Agriculture sector can be considered as a crucial component as it contributes 18% of country GDP. As native farmers still cling to inapplicable traditional theorems and practices to track customer’s vegetable consumption trends, they failed to assure a “good price” for their harvest. Also, the plants are prone to many diseases and pests’ attacks which causes loss of the harvest. Unreliable problem identification, poor knowledge on application of fertilizers and pesticides have caused the farmers to lose their profits. As a solution to mitigate these problems, this study has built a computerized system with a vegetable price prediction system and a plant disease, pest identification system. Taking Potato as an example, the parameters of the time series model were analyzed through experiment and has built the price predictor using ARIMA model. Also, with advanced Image processing and CNN techniques Plant disease, pest identifier has built. Desirable results of the entire system have been achieved with more than 94%-97% rate of accuracy. The ultimate goal of this study is to achieve the optimal growth of the sector by navigating the users for a quality and effective decision making by reliable market trends and problem identification.Publication Embargo OMNISCIENT: A Branch Monitoring System for Large-scale Organizations(2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT, 2020-12-10) Jayasekara, T.; Omalka, K.; Hewawelengoda, P.; Kanishka, C.; Samarasinghe, P.; Weerasinghe, L.Omniscient is a system that enables higher-level management of massive organizations to remotely monitor and scrutinize the activities that take place in the branches from the head office itself by providing exclusive insight in the form of detailed reports on the employees’ behaviour and performance daily, weekly and monthly. The system further monitors the branch and provides reports on any suspicious behaviour and also on the customers’ activity within the branch premises. Omniscient rates the customer’s level of satisfaction by capturing the customer’s facial expressions and analyzing their emotions while they are being served. The employee face and dress recognition models have accuracies of 90.90% and 87.00% respectively while, employee activity detection has an accuracy of 89.00%. Customer emotion and miscellaneous activities detection models have the accuracies of 91.50% and 83.00% respectively. All of the aforementioned procedures were made possible by systematically analyzing the IP camera video footage obtained throughout the day to analyze the work productivity and performance of the branch as accurately as possible using deep learning and modern visual computing techniques like CNN, OpenCV, Haar Cascade classifier, face recognition, Dlib and Darknet.Publication Open Access SriHealth: A Single Platform for Meal Plans, Workouts, Yoga Schedules Based on SriLankan Lifestyle(2021 3rd International Conference on Advancements in Computing (ICAC), SLIIT, 2021-12-09) Anusari, T.H.G.M.; Amarasinghe, B.Y.; Munasinghe, G.K.; Epitawala, E.K.K.N.; Pemadasa, M.G.N.; Weerasinghe, L.Food is a fundamental piece of human existence. People have forgotten to follow good eating patterns and exercise goals because of today's fast-paced lifestyles, resulting in malnutrition, which has become one of the most serious public health issues in developing countries, including Sri Lanka. As a result, people are unable to adhere to a probable schedule to satisfy their desires intend for Sri Lankan cuisine. In this study, a mobile-based application named "SriHealth" is developed with an emphasis on Image Processing, Natural Language Processing (NLP), Classification and Regression in Machine Learning techniques. The results obtained show that for classification of food preferences identification produces high accuracy of 87% on Support Vector Machine (SVM) classifier, medical record breakdown comprises of 75% accuracy with Clustering through Logistic Regression, schedule provider consist of an 95% accuracy level in Naïve Bayes algorithm while the calorie counter provides an accuracy level of 73% in MobileNet. The proposed work would identify user food preferences and medical conditions, classify the user, provide the suitable meal plan, exercise and yoga plan schedule on their categorization, and measure the number of calories consumed while assisting them for a healthy life.
