首页> 外文会议>Geospatial InfoFusion and Video Analytics IV; and Motion Imagery for ISR and Situational Awareness II >Detection of Potential Mosquito Breeding Sites based on Community Sourced Geotagged Images
【24h】

Detection of Potential Mosquito Breeding Sites based on Community Sourced Geotagged Images

机译:基于社区来源的地理标记图像的潜在蚊子繁殖地点的检测

获取原文
获取原文并翻译 | 示例

摘要

Various initiatives have been taken all over the world to involve the citizens in the collection and reporting of data to make better and informed data-driven decisions. Our work shows how the geotagged images collected through the general population can be used to combat Malaria and Dengue by identifying and visualizing localities that contain potential mosquito breeding sites. Our method first employs image quality assessment on the client side to reject the images with distortions like blur and artifacts. Each geotagged image received on the server is converted into a feature vector using the bag of visual words model. We train an SVM classifier on a histogram-based feature vector obtained after the vector quantization of SIFT features to discriminate images containing either a small stagnant water body like puddle, or open containers and tyres, bushes etc. from those that contain flowing water, manicured lawns, tyres attached to a vehicle etc. A geographical heat map is generated by assigning a specific location a probability value of it being a potential mosquito breeding ground of mosquito using feature level fusion or the max approach presented in the paper. The heat map thus generated can be used by concerned health authorities to take appropriate action and to promote civic awareness.
机译:全世界已经采取了各种举措,使公民参与数据的收集和报告,以做出更好,更明智的数据驱动决策。我们的工作展示了如何通过识别和可视化包含潜在蚊子繁殖地点的地方,将通过普通人群收集的带有地理标签的图像用于抗击疟疾和登革热。我们的方法首先在客户端使用图像质量评估,以拒绝具有诸如模糊和伪影之类的失真的图像。使用视觉文字袋模型将在服务器上接收的每个带有地理标记的图像转换为特征向量。我们在对SIFT特征进行矢量量化后获得的基于直方图的特征向量上训练SVM分类器,以将包含小死水体(如水坑)或开放容器和轮胎,灌木等的图像与包含流动水,修剪过的图像区分开来通过使用特征级融合或本文中介绍的最大方法,通过将特定位置的概率值指定为潜在的蚊子繁殖场的概率值,可以生成地理热图。如此产生的热图可被有关卫生当局用来采取适当行动并提高公民意识。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号