Enhancement Face Detection using Viola-Jones and Multi-Block Local Binary Pattern
How to Cite?
Wan Zulaikha Wan Yaacob, Abd Samad Hasan Basari, Nuzulha Khilwani Ibrahim, Ariff Idris, "Enhancement Face Detection using ViolaJones and MultiBlock Local Binary Pattern," International Journal of Engineering Trends and Technology, vol. 69, no. 12, pp. 114-119, 2021. Crossref, https://doi.org/10.14445/22315381/IJETT-V69I12P213
Conversations on Twitter as one of the biggest social media platforms, especially in Indonesia, which can be related to problems or events that occur around them, can easily become viral and spread widely. It is also supported by the fact of its evolution, that a piece of news is published on a television station, print media, or online media; in fact, some of it comes from issues or viral events that thrive in the community. This research is a continuation of previous research in building an information system platform for journalists, which helps to find what events or issues have the potential to become viral or continue to be updated with ongoing issues. Coupled with the application of the geocode method and the proposed conversation clusterization using Lingo Algorithm that`s provided by Carrot2 Tools. In this study, authors used this algorithm to help determine which conversations were considered important and which were not. These collected conversations can be mapped based on the description of the location or address discussed in the text of the conversation. This will really help journalists to find news material around them, which has proximity to their location and news sources. The success in the geocode process in this study depends on several parameters such as writing location names greatly affects the effectiveness of location name extraction using the NER model that was created, even though it has been trained with the characteristics of the Indonesian region, but the use of slang in showing names locations can be misinterpreted, this is also influenced by the punctuation included, so the separation of location names greatly affects the effectiveness of geocoding. Then the collection of spatial data used also affects the level of the match in finding the described location, as in the example that has been discussed.
Data Mining, Geocoding, Lingo Clustering, Naive Bayes, Named Entity Recognition, Twitter
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