Wide rear vehicle recognition using a fisheye lens camera image
Autor: | Hyun-Tae Kim, Sang-Bock Cho, Bruce Kim, Jin-Seong Jeong |
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Rok vydání: | 2016 |
Předmět: |
Brightness
business.industry Computer science Distortion (optics) 05 social sciences 050801 communication & media studies Grayscale law.invention Lens (optics) Fisheye lens 0508 media and communications Colored law Histogram Computer graphics (images) 0502 economics and business Computer vision Camera image Artificial intelligence business 050203 business & management |
Zdroj: | APCCAS |
DOI: | 10.1109/apccas.2016.7804067 |
Popis: | In this paper, we used a fisheye lens to acquire the wider rear view camera images. Fisheye lens provided about 170° wide rear view images but the images were distorted because of the characteristics of the lens. In order to compensate this, distorted images were transformed to flat images using a distortion model (FOV). Then, noises of compensated images were removed using filters and the images were converted to grayscale. Grayscale images were then applied to HOG (histogram of gradient) to detect cars approaching from back and the positions of the cars were indicated as colored rectangles. As a future study, we will test our system with harsher environments (such as in darkness, with brightness changes, in different climates) and adjust it to have better recognition rates regardless of environments. We also have a plan to improve our system to evaluate the risk of collision by predicting the velocity and direction of approaching cars. |
Databáze: | OpenAIRE |
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