# Create polygon from set of points distributed

I need help on the R language

from my code:

``````inter1= read.table("C:/inter.csv", header=TRUE)
inter1\$xx<-inter1\$long
inter1\$yy<-inter1\$lat
coordinates(inter1) = ~long + lat
#Plot the results:
plot(inter1)
``````

I had this plot : http://i.stack.imgur.com/98aTf.png

I'm looking now for each set of points on the plot draw a polygon, I do not know the process i must prceder to get there, thank you for your help

inter.csv:

``````long    lat var1.pred
1   4.2 19  31.8216045615229
2   4.3 19  31.913824396486
3   4.4 19  32.0090783396173
4   4.5 19  32.1067681024233
5   4.6 19  32.2061094352961
6   4.7 19  32.3061148156713
7   4.8 19  32.4055837134796
8   4.9 19  32.503104196147
9   5   19  32.5970697606984
10  5.1 19  32.6857147918646
11  5.2 19  32.767170733855
12  5.3 19  32.8395428348418
13  5.4 19  32.9010042955024
14  5.5 19  32.9499012300441
15  5.6 19  32.9848587133105
16  5.7 19  33.004876178167
17  5.8 19  33.0094002932703
18  5.9 19  32.998365567474
19  6   19  32.9721970820907
20  6.1 19  32.9317751315546
21  6.2 19  32.8783669584517
22  6.3 19  32.8135349988031
23  6.4 19  32.7390332831422
24  6.5 19  32.6567036402505
``````
• does your table contains a column identifying each set of points? Sep 28 '14 at 20:07
• no,observation are all in a single table, as follows : i edited my post Sep 28 '14 at 20:19

In your case, one solution is to pass by an intermediate rasterization, and then polygonize it. Polygons can be smoothed for better visualization. See below the code

``````inter1= read.table("inter.csv", header=TRUE)

#add a category (required for later rasterizing/polygonizing)
inter1 <- cbind(inter1, cat = rep(1L, nrow(inter1)),stringsAsFactors = FALSE)

#convert to spatial points
coordinates(inter1) = ~long + lat

gridded(inter1) <- TRUE

#convert to raster
r <- raster(inter1)

#convert raster to polygons
sp = rasterToPolygons(r, dissolve = T)

#addition transformation to distinguish well the set of polygons
polys <- slot(sp@polygons[], "Polygons")
output <- SpatialPolygons(
Srl = lapply(1:length(polys),
function(x){
p <- polys[[x]]

#applying spline.poly function for smoothing polygon edges
px <- slot(polys[[x]], "coords")[,1]
py <- slot(polys[[x]], "coords")[,2]
bz <- spline.poly(slot(polys[[x]], "coords"),100, k=3)
bz <- rbind(bz, bz[1,])
slot(p, "coords") <- bz

# create Polygons object
poly <- Polygons(list(p), ID = x)
return(poly)
}),
proj4string = CRS("+init=epsg:4326")
)

#plot
plot(sp, border = "gray", lwd = 2) #polygonize result
plot(output, border = "red",  add = TRUE) #smoothed polygons
`````` Note: You have long/lat coordinates (crs = EPSG:4326), so i made the example so you can see where to specify the projection of your spatial polygons, during its construction. If you didn't specify the `proj4string` at this time, you can still do it after creating `output` object doing `proj4string(output) <- CRS("+init=epsg:4326")`

• yes, i thought you would have a column to cluster, but i've seen your comment afterwhile. Not sure rasterizing could be doable. i'm going to check if clustering can be of help. Sep 29 '14 at 7:22
• there's no file hosting. You should use another one (e.g. pastebin, dropbox) and paste the link. Sep 29 '14 at 9:08
• ok, from your screenshot, i see you did a selection based on the `var1.pred` variable, it does not correspond to `plot(inter1)`, please update it with the right filter you set. Sep 29 '14 at 10:13
• i've edited my answer, please check. hope this helps Sep 29 '14 at 14:10
• i can suggest you `gSimplify` from `rgeos` (see my update above). they might be other tools (i keep update if i see something better). if it solves your problem, please leave a vote Sep 29 '14 at 15:51