Please use this identifier to cite or link to this item: https://dspace.ctu.edu.vn/jspui/handle/123456789/45778
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dc.contributor.advisorTrần, Công Án-
dc.contributor.authorNguyễn, Văn Lợi-
dc.date.accessioned2021-03-04T07:11:26Z-
dc.date.available2021-03-04T07:11:26Z-
dc.date.issued2021-
dc.identifier.otherB1606817-
dc.identifier.urihttps://dspace.ctu.edu.vn/jspui/handle/123456789/45778-
dc.description61 Trvi_VN
dc.description.abstractVideo surveillance systems have come a long way from fixed security cameras. This technology now functions as miniature computers, offering features such as motion sensors and automatic mobile notifications or automatically contacting law enforcement. The goal of this project was to develop a fast and light-weight control program that can embedded into low cost and low power device. The program contains three main modules: Object detection module, streaming module, state machine based controlling module. Streaming module was implemented by using FFMPEG library. The streaming module was able to stream live video from camera to relay server throw RMTP protocol with around 10 seconds latency. Object detection is key feature in this project. Most state of the art models for object detection, however, are computationally complex. The goal of this module was to develop a fast and light-weight framework for object detection in a sequence of images using a Raspberry Pi 3 Model B, a low cost and low power computer. As even the most light-weight state of the art object detection models, i.e. Tiny-YOLO and SSD300 with MobileNet, were considered too computationally complex, a simplified approach had to be taken. This approach assumed a stationary camera and access to a background image. With these constraints, background subtraction was used to locate objects, while a light weight object recognition model based on MobileNet was used to classify any objects that were found. A tracker that primarily relied on object location and size was used to track distinct objects between frames. The suggested framework was able to achieve framerates as high as 1.5 FPS with 1 object in the scene, and 1.3 FPS when 4 objects were present. These values are significantly higher than those achieved using the mentioned state of the art models. This performance, however, comes at a price. While the suggested framework was seen to work well in many situations, it does have several weaknesses. Some of these include poor handling of occlusion, a lack of ability to distinguish between objects in close proximity, and false detections when lighting conditions change. Additionally, its processing speed is affected by the number of objects in an image to a larger degree than what the state of the art models are. None of the mention models have deterministic processing speeds..vi_VN
dc.language.isoenvi_VN
dc.publisherTrường Đại Học Cần Thơvi_VN
dc.subjectCÔNG NGHỆ THÔNG TINvi_VN
dc.titleSECURITY CAMERA EMBEDDED MODULESvi_VN
dc.typeThesisvi_VN
Appears in Collections:Trường Công nghệ Thông tin & Truyền thông

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