SECURITY SYSTEM USING DEPTH CAMERA AND IOT

Authors

  • Puntadewa Zaid Barliena Science and Technology, Sunan Ampel State Islamic University, Surabaya
  • Achmad Teguh Wibowo Science and Technology, Sunan Ampel State Islamic University, Surabaya
  • Muhammad Andik Izzuddin Science and Technology, Sunan Ampel State Islamic University, Surabaya
  • Abdul Rachman Doctoral of Management Science, STIESIA, Surabaya

Abstract

The depth camera is widely used in motion games known as Kinect. The depth camera is an infrared camera used for image-processing three-dimensional that detected the shapes and contours of objects within an image. This article explained that the process of image-processing data could make the security system motion-based for a safe room by using the threshold technique. The threshold technique is used as a detector. By separating objects with the background image. The threshold technique could be present to a histogram. A change of the histogram suddenly could trigger the alarm. The result from 100 experiments is the depth camera could detect movement at a distance one until 2 meters and low light condition or bright light condition that 0 until 10 candelas with a ratio of success is 100%. Another result from 100 on the second experiment is that the depth camera can detect movement through mirror reflection with a rate of achieving 56%. The depth camera is well to detect motion, although depth camera couldn't detect movement at a distance above 2 meters, and has 44% fail to detect movement through mirror reflection, the infrared is reflected itself.

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Published

2020-10-04

How to Cite

Barliena, P. Z., Wibowo, A. T., Izzuddin, M. A., & Rachman, A. (2020). SECURITY SYSTEM USING DEPTH CAMERA AND IOT. International Conference of Business and Social Sciences, 1(1). Retrieved from https://debian.stiesia.ac.id/index.php/icobuss1st/article/view/88

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Section

International Conference of Business and Social Sciences