Twitter has become popular among researchers as a means to detect various kinds of events. Several attempts were made to detect trends, real world events, news, earthquakes and others with satisfying results. However they do not perform well on finding local events such as release parties, musicians in a park, or art exhibitions. Many of the extracted local events were not related to an event but to locations, global events, or just common words. In this paper, we introduce Event Radar, a novel local event detection method to improve the precision by analyzing seven day historic Tweet data. We estimate the average Tweet frequency of keywords per day in and around a potential event area and use these estimations to classify whether the keywords are related to a local event. The proposed scheme produces a precision rate of 68% compared to 25.5% achieved by previous work.