![5 types of imagery in the pedestrian 5 types of imagery in the pedestrian](https://images.saymedia-content.com/.image/ar_1:1%2Cc_fill%2Ccs_srgb%2Cfl_progressive%2Cq_auto:eco%2Cw_1200/MTc0NTA2NjM4NjU1MzY3MTEz/the-pedestrian-ray-bradbury-meaning-themes.jpg)
Many Pasadena school zones have few accidents, so policies in these areas may have little effect. However, sometimes a city does not have enough funds to enact new policy for every location. Changing street signs and adding bicycle lanes in these areas may reduce accidents near schools. You could stop your analysis here, and use this map as grounds to implement a policy that encompasses all school zones. Adding more information beyond a heat map has provided essential context for policymakers. At the same time, the area with the highest density of accidents is not within any school area. Some school areas have no pedestrian or cyclist accidents, while others have a significant amount. Arcade expressions use attribute information to determine symbology. To create these four symbol categories, you'll use an Arcade expression. This information adds more detail to your findings and helps support policymaker decisions on your subject. You also want to distinguish pedestrian accidents from bicycle accidents. In particular, you want to distinguish fatal accidents from accidents with only injuries. Next, you'll change the symbols of your accidents layer to show different categories of accidents. Check the Traffic Collisions layer to turn it back on. Uncheck the Traffic Collision Hot Spots layer to turn it off.You now have a better understanding of the data. These results all point to patterns of high accidents in downtown. The map indicates that accidents happen statistically regularly across the city, but with a statistically significant clustering in the downtown area. There are no blue areas on the map, but if there were, they would represent areas with statistically low clustering. The red hexbins show areas of spatially significant clustering, while white hexbins show areas with no significant clustering. Clustering groups points within a certain distance of one another into a single symbol, showing where many points are located close together.
![5 types of imagery in the pedestrian 5 types of imagery in the pedestrian](https://imgix.pedestrian.tv/content/uploads/2014/02/Haim-IF-I-Could-Change-Your-Mind-619-386.jpg)
You'll map the accidents using all three methods to gain insight into your data.įirst, you'll apply clustering to your points. These methods all reveal where accidents are happening at abnormal rates. Ways to find patterns in your data include point clustering, heat maps, and hot spot analysis. You've mapped accidents, but what patterns can be found in the data? Are there areas where particularly large clusters of accidents are occurring? It's helpful to display the data in different map styles to find trends. A date filter could be used to compare accidents over time and show whether city policies are having a positive effect. If you wanted, you could also create filters to show only data from a specific year or time period.
![5 types of imagery in the pedestrian 5 types of imagery in the pedestrian](https://ecdn.teacherspayteachers.com/thumbitem/The-Pedestrian-by-Ray-Bradbury-Figurative-Language-Worksheet-and-KEY-2353552-1500873717/original-2353552-1.jpg)
Only accidents involving either a cyclist or a pedestrian are shown.įiltering your data highlights the subject of interest.