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In: 2017 international conference on electrical, electronics, communication, computer, and optimization techniques (ICEECCOT), Mysuru, 2017. Kumar BRS, Varalakshmi N, Lokeshwari SS, Rohit K, Manjunath, Sahana DN (2017) Eco-friendly IOT based waste segregation and management. In: 2014 Texas instruments India educators’ conference (TIIEC), Bangalore, pp 1–6
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In: 2019 Amity international conference on artificial intelligence (AICAI), Dubai, 2019, pp 274–279Ĭhandramohan A, Mendonca J, Shankar, NR, Baheti NU, Krishnan NK, Suma MS (2004) Automated waste segregator. Pereira W, Parulekar S, Phaltankar S, Kamble V (2019) Smart bin (waste segregation and optimisation). Reporter staff (2019) In a first, BBMP drafts by-lows for solid waste management. J Mater Cycles Waste Manage 21:705–712Īgbefe LE, Lawson ET, Yirenya-Tawiah DJ (2019) Awareness on waste segregation at source and willingness to pay for collection service in selected market in Ga West Municipality, Accra, Ghana. Accessed 30 June 2019īhargavi N, Arvind L, Priyanka A (2019) Mobile application in municipal waste tracking: a pilot study of “PAC waste tracker” in Bangalore city, India. Samar L (2019) India’s challenges in waste management. KeywordsĬensus of India (2011) Office of Registrar general and census commissioner, India. The system is useful in the perspective of recycling and eventually for sustainable waste management. Hence the system attains waste segregation autonomously and efficiently as compared to the traditional segregation system. The system is trained and tested with a sufficient trash image dataset which achieves the accuracy of 85–96% while performing the complete segregation process. Finally, the mechanical actuators interfaced with Raspberry Pi takes the action to drop the classified trash to the corresponding trash bin. The system captures the trash image and then classified by a trained deep neural network ported on an embedded platform (Raspberry Pi) and sensor module. Autonomous Smart Trash Segregator (STS) segregates the trash into six types of waste such as plastic, organic, paper, cardboard, metal, and glass. So, proposing a Smart Trash Segregator (STS) at source (offices, airport, railway station, bus stop, malls) level. Traditional waste management systems are deficient in the segregation of waste. Collected waste may not be in segregated form, so most of the waste ends up in landfills without getting potential waste recycled. An alarming rate of the rising population of India produces mushrooming waste day by day.
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