diff options
-rw-r--r-- | doc/base.tex | 2 | ||||
-rw-r--r-- | doc/dui.md | 11 | ||||
-rw-r--r-- | doc/refs.bib | 7 |
3 files changed, 13 insertions, 7 deletions
diff --git a/doc/base.tex b/doc/base.tex index d51d0c4..e8bc8f1 100644 --- a/doc/base.tex +++ b/doc/base.tex @@ -66,7 +66,7 @@ \input{\jobname.md.tex} -% \printbibliography[heading=bibintoc] +\printbibliography[heading=bibintoc] % \printglossaries % \listoftables % \listoffigures @@ -415,7 +415,10 @@ fB(i) = max(0, min(iB − iR, iB − iG)/s), fY(i) = max(0, min(iR − iB, iG − iB)/s). ``` -This method can result in some issues on the blue channel (see source 1 page 86583 for more explanation). As a solution to this issue use the following formula for the blue channel instead: +This method can result in some issues on the blue channel +\parencite[86583]{ieee:sign-detection}. As a solution to this issue use the +following formula for the blue channel instead: + ```py f′B(i) = max((0, iB − iR)/s). ``` @@ -449,7 +452,7 @@ This color space is used for finding uncorrelated color components, the L\*a\*b\ This method avoids the use of fixed thresholds that might need adjusting at times. In order to resolve this some authors tried to transfer the problem into pixel classification where a neural network classifies every pixel in the input image, the pixel classification algorithms are often slower than other color extraction methods. -#### results +#### Results \def\signDetectionColor{ The above described methods where also applied to a database in order to compare each method. This resulted in the conclusion that, using a normalized RGB space is giving the a mixture of most detections and least false-positve results. See source 1 page 86584 for the full report. @@ -516,7 +519,3 @@ While making a binary tree is seemingly the most simple, yet effective solution. \signDetectionShape \signRecognition -## Sources: - -1. [IEEE, Digital Object Identifier June 26, 2019 (pages 86578 - 86596)](https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=8746141) - diff --git a/doc/refs.bib b/doc/refs.bib index e69de29..7ae5f95 100644 --- a/doc/refs.bib +++ b/doc/refs.bib @@ -0,0 +1,7 @@ +@article{ieee:sign-detection, + author = {Chunsheng Liu and Shuang Li and Faliang Chang and Yinhai Wang}, + title = {Machine Vision Based Traffic Sign Detection Methods: Review, + Analyses and Perspectives}, + year = {2019}, + url = {https://ieeexplore.ieee.org/stamp/stamp.jsp?tp=&arnumber=8746141} +} |