# Algorithm to find paths in a list of scattered points

I have a list of points taken from measuring a model. An important part of the analyses to be made consist on finding "candidate paths" along these points, that will further be trimmed and refined.

Below there are images showing a plot of the raw data, and a hand-made drawing of what the detected paths would look like. These paths should be continuous and approximately vertical, and the output format would be a list of lists of points (color of points is not relevand for path-finding itself):

I suppose this can be solved by brute-force, exhaustive methods, but I suppose, either, there can be some well-known algorithm for this.

I use Python, so Numpy/Scipy examples would be greatly appreciated (`scipy.spatial` sounds like the perfect candidate for that)

EDIT: a sample dataset is provided below (list of [x,y,weight] points):

``````[[ -0.7898176   -3.35201728   4.36142086]
[  2.99221402  -3.35201728   1.11907575]
[  6.97475149  -3.35201728   2.4320322 ]
[ -4.82443609  -2.35201728   0.6479064 ]
[ -1.32418909  -2.35201728   1.88004944]
[  0.07067882  -2.35201728   1.10982834]
[  3.09169448  -2.35201728   1.8557436 ]
[  7.10399403  -2.35201728   2.03906224]
[ -3.07207606  -1.35201728   0.35500973]
[  2.63202993  -1.35201728   5.32397834]
[  5.19884868  -1.35201728   1.63816326]
[  7.65721835  -1.35201728   1.13843392]
[  2.48172754  -0.35201728   6.65584512]
[  6.0905911   -0.35201728   1.15552652]
[  8.62497546  -0.35201728   0.30407144]
[ -4.7300089    0.64798272   0.31481496]
[ -3.03274093   0.64798272   0.95337568]
[  2.19653614   0.64798272  10.3675204 ]
[  6.20384058   0.64798272   1.42106077]
[ -4.08636605   1.64798272   0.28875288]
[  2.03344989   1.64798272  13.04648211]
[ -4.11717795   2.64798272   0.39713141]
[  1.93304283   2.64798272  10.41313242]
[ -4.37994815   3.64798272   0.84588643]
[  1.66081408   3.64798272  14.96380955]
[ -4.19024027   4.64798272   0.73216113]
[  1.60252433   4.64798272  14.72419286]
[  6.77837359   4.64798272   0.6186005 ]
[ -4.14362668   5.64798272   0.93673165]
[  1.55372968   5.64798272  12.9421123 ]
[ -4.62223541   6.64798272   0.6510101 ]
[  1.527865     6.64798272  10.80209351]
[  6.86820685   6.64798272   0.82550801]
[ -4.68259732   7.64798272   0.45321369]
[  1.36167494   7.64798272   6.45338514]
[ -5.19205787   8.64798272   0.23935013]
[  1.21003466   8.64798272  10.13528877]
[  7.6689546    8.64798272   0.32421776]
[ -5.36436818   9.64798272   0.79809416]
[  1.26248534   9.64798272   7.67036253]
[  7.35472418   9.64798272   0.92555691]
[ -5.61723652  10.64798272   0.4741007 ]
[  1.23101086  10.64798272   7.97064105]
[ -7.83024735  11.64798272   0.47557318]
[  1.20348982  11.64798272   8.20694816]
[  1.14422758  12.64798272   9.26244889]
[  9.18164464  12.64798272   0.72428381]
[  1.0827069   13.64798272  10.08599118]
[  6.80116007  13.64798272   0.4571425 ]
[  9.384236    13.64798272   0.42399893]
[  1.04053491  14.64798272  10.48370805]
[  9.16197972  14.64798272   0.39930227]
[ -9.85958581  15.64798272   0.39524976]
[  0.9942501   15.64798272   8.39992264]
[  8.07642416  15.64798272   0.61480371]
[  9.55088151  15.64798272   0.54076473]
[ -7.13657331  16.64798272   0.32929172]
[  0.92606211  16.64798272   7.83597033]
[  8.74291069  16.64798272   0.74246827]
[ -7.20022443  17.64798272   0.52555351]
[  0.81344517  17.64798272   6.81654834]
[  8.52844624  17.64798272   0.70543711]
[ -6.97465178  18.64798272   1.04527813]
[  0.61959631  18.64798272  10.33529022]
[  5.733054    18.64798272   1.2309691 ]
[  8.14818453  18.64798272   1.37532423]
[ -6.82823664  19.64798272   2.0314052 ]
[  0.56391636  19.64798272  13.61447357]
[  5.79971126  19.64798272   0.30148347]
[  8.01499476  19.64798272   1.72465327]
[ -6.78504689  20.64798272   2.88657804]
[ -4.79580634  20.64798272   0.36201975]
[  0.548376    20.64798272   7.8414544 ]
[  7.62258506  20.64798272   1.52817905]
[-10.50328534  21.64798272   0.90358671]
[ -6.59976138  21.64798272   2.62980169]
[ -3.71180255  21.64798272   1.27094175]
[  0.5060743   21.64798272  11.06117677]
[  4.51983105  21.64798272   1.74626435]
[  7.50948795  21.64798272   3.46497629]
[ 11.10199877  21.64798272   1.78047269]
[-10.15444935  22.64798272   1.47486166]
[ -6.26274479  22.64798272   4.73707852]
[ -3.45440904  22.64798272   1.72516012]
[  0.52759064  22.64798272  12.58470433]
[  4.22258017  22.64798272   2.63827535]
[  7.03480033  22.64798272   3.506412  ]
[ 10.63560314  22.64798272   3.56076386]
[ -5.95693623  23.64798272   2.97403863]
[ -3.66261423  23.64798272   2.31667236]
[  0.52051366  23.64798272  12.5526344 ]
[  4.21083787  23.64798272   1.95794387]
[  6.82438636  23.64798272   4.77995659]
[ 10.18138299  23.64798272   5.21836205]
[ -9.94629932  24.64798272   0.4074823 ]
[ -5.74101948  24.64798272   2.60992238]
[  0.52987226  24.64798272  10.68846987]
[  6.29981921  24.64798272   3.56204471]
[  9.96431168  24.64798272   2.85079129]
[ -9.64229717  25.64798272   0.4503241 ]
[ -5.579063    25.64798272   0.64475469]
[  0.52053534  25.64798272  10.05046667]
[  5.79167815  25.64798272   0.92797027]
[ 10.05116919  25.64798272   2.52194933]
[ -8.55286247  26.64798272   0.94447148]
[  0.45065604  26.64798272  10.97432823]
[  5.50068393  26.64798272   2.39645232]
[ 10.08992273  26.64798272   2.77716257]
[-16.62381217  27.64798272   0.2021621 ]
[ -9.62146213  27.64798272   0.62245778]
[ -7.66905507  27.64798272   2.84466396]
[  0.38656111  27.64798272  10.74369366]
[  5.76925402  27.64798272   1.13362978]
[  9.83525197  27.64798272   1.18241147]
[-15.64874512  28.64798272   0.18279302]
[ -7.52932494  28.64798272   2.94012191]
[  0.32171219  28.64798272  10.73770466]
[  9.4062684   28.64798272   1.41714298]
[-12.71287717  29.64798272   0.70268073]
[ -7.59473877  29.64798272   2.16183026]
[  0.20748772  29.64798272  12.97312987]
[  3.92952496  29.64798272   1.54987681]
[  9.05148017  29.64798272   2.40563748]
[ 14.96021523  29.64798272   0.55258241]
[-12.14428813  30.64798272   0.36365363]
[ -7.12360666  30.64798272   2.54312163]
[  0.40594038  30.64798272  12.64839117]
[  4.59465757  30.64798272   1.23496581]
[  8.54333134  30.64798272   2.18912857]
[-10.6296531   31.64798272   1.4839259 ]
[ -7.09532763  31.64798272   2.0113838 ]
[  0.37037733  31.64798272  12.2071139 ]
[  3.01253349  31.64798272   3.01591777]
[  4.64523695  31.64798272   3.50267541]
[  8.39369696  31.64798272   2.53195817]
[ -7.07947026  32.64798272   1.01324147]
[  0.39269437  32.64798272   9.67368625]
[  8.58669997  32.64798272   1.00475646]
[ 12.02329114  32.64798272   0.50782399]
[-10.13060786  33.64798272   0.31475653]
[ -7.30360407  33.64798272   0.35065243]
[  0.49556923  33.64798272   9.66608818]
[ -5.37822311  34.64798272   0.38727401]
[  0.4958055   34.64798272   7.5415026 ]
[  6.07719006  34.64798272   0.63012453]
[ -4.64579055  35.64798272   0.39990249]
[  0.46323666  35.64798272   4.60449213]
[  4.72819312  35.64798272   0.98050594]
[ -4.62418372  36.64798272   0.64160709]
[  0.48866236  36.64798272   4.29331656]
[  5.06493722  36.64798272   0.59888608]
[  0.49730481  37.64798272   1.32828464]
[ -1.31849217  38.64798272   0.70780886]
[  1.70966455  38.64798272   0.88052135]
[  0.06305774  39.64798272   0.47366487]
[  2.13639356  39.64798272   0.67971461]
[ -0.84726354  40.64798272   0.63787522]
[  0.55723562  40.64798272   0.62855097]
[  2.22359779  40.64798272   0.33884894]
[  0.77309816  41.64798272   0.4605534 ]
[  0.56144565  42.64798272   0.43678788]]
``````

Thanks for any help!

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