WEBVTT FILE 1 00:00:01.590 --> 00:00:06.180 My name is Compton James Tucker, and I am a scientist at the 2 00:00:06.180 --> 00:00:10.560 Goddard Space Flight Center. We're very interested to improve 3 00:00:10.590 --> 00:00:15.270 our knowledge of the carbon cycle globally. Where is carbon 4 00:00:15.270 --> 00:00:19.410 going in vegetation? And how long does it persist? In the 5 00:00:19.410 --> 00:00:23.220 study, we use a large volume of commercial satellite data, 6 00:00:24.840 --> 00:00:27.990 hundreds of thousands of commercial satellite images at 7 00:00:27.990 --> 00:00:32.880 the 50 centimeter scale, to map trees to identify trees in a 8 00:00:32.880 --> 00:00:36.510 semi-arid region, from the Atlantic Ocean to the Red Sea in 9 00:00:36.510 --> 00:00:40.260 Africa, what we actually mapped were tree crowns. 10 00:01:13.210 --> 00:01:17.800 We then use our tree crown data to make predictions from the 11 00:01:17.830 --> 00:01:21.100 allometry, which was also collected on the same region. 12 00:01:21.460 --> 00:01:26.260 And the data are very important. The the processing code is 13 00:01:26.260 --> 00:01:29.710 important, the training data is important. The allometry is 14 00:01:29.710 --> 00:01:32.500 important. And then understanding the results that 15 00:01:32.500 --> 00:01:38.410 come out of those four components. In the study, the 16 00:01:38.410 --> 00:01:43.990 study has been in the works since 2015, or 2016. I started 17 00:01:43.990 --> 00:01:48.550 five or six years ago, draining the archive of all of the data 18 00:01:48.550 --> 00:01:53.050 from Africa. This has taken me three or four years to get all 19 00:01:53.050 --> 00:02:00.250 the data. Secondly, Ankit, who's one of our team members, as a 20 00:02:00.250 --> 00:02:05.080 graduate student in computer science, he wrote our processing 21 00:02:05.080 --> 00:02:08.560 code. And it's a highly optimized neural net code, it 22 00:02:08.560 --> 00:02:12.670 works very well. He worked on that for two or three years, 23 00:02:12.730 --> 00:02:16.420 then you need the training data to go with the processing code. 24 00:02:16.450 --> 00:02:20.290 When you use machine learning or artificial intelligence, you 25 00:02:20.290 --> 00:02:24.880 need to train on something so you have confidence that that's 26 00:02:24.880 --> 00:02:27.460 what you're measuring. Training data is where you go out and you 27 00:02:27.460 --> 00:02:31.900 select all different types of trees. And they have to have a 28 00:02:31.900 --> 00:02:35.170 green tree crown and an associated shadow to be a tree. 29 00:02:35.800 --> 00:02:39.490 And Martin Brandt did this over three or four months, and 30 00:02:39.490 --> 00:02:45.490 selected 89,000 or 90,000 individual trees, it's a heroic 31 00:02:45.490 --> 00:02:53.560 effort. Now there are people like Pierre Hiernaux, one of our 32 00:02:53.560 --> 00:02:56.590 co-authors who go out and they sample trees and they measure 33 00:02:56.590 --> 00:03:00.430 the tree crown, they then cut the tree down, they then measure 34 00:03:00.430 --> 00:03:05.560 the volume of leaves in the tree crown. The same for the wood and 35 00:03:05.560 --> 00:03:10.480 the same for the roots. And so we then convert the tree crown 36 00:03:10.480 --> 00:03:16.060 data which we measure into the predicted leaf mass or carbon, 37 00:03:16.270 --> 00:03:21.250 the root carbon and the wood carbon of every individual tree. 38 00:03:22.020 --> 00:03:26.790 You know, individual tree crown is probably the highest 39 00:03:27.810 --> 00:03:36.570 resolution you're gonna get. And like knowing the exact number of 40 00:03:36.570 --> 00:03:41.460 trees, and also when they have leaves throughout the year is 41 00:03:41.460 --> 00:03:45.000 going to be really, really important for improving our 42 00:03:45.000 --> 00:03:45.900 climate models. 43 00:03:47.130 --> 00:03:50.430 Then you put all this together, and you run out on a 44 00:03:50.430 --> 00:03:54.270 supercomputer. So we would run the data of this way, run it 45 00:03:54.270 --> 00:03:58.290 that way, then you take the results. That's really the fun 46 00:03:58.290 --> 00:04:02.190 part of seeing what you did, how well you did it, and what it can 47 00:04:02.190 --> 00:04:02.790 be used for. 48 00:04:03.950 --> 00:04:08.720 So the viewer is an important tool for NGOs that are 49 00:04:08.720 --> 00:04:13.700 interested in understanding if the tree restoration programs 50 00:04:13.730 --> 00:04:17.990 have paid off, but it can also be used for the local farmer who 51 00:04:17.990 --> 00:04:22.070 would be interested in knowing how many trees are standing on 52 00:04:22.250 --> 00:04:25.220 the fields, and are they alive, are they dead, 53 00:04:25.400 --> 00:04:29.300 etc. With a viewer you can zoom into individual trees and see 54 00:04:29.300 --> 00:04:33.050 how much carbon is there and the leaves and the wood and the 55 00:04:33.050 --> 00:04:38.240 roots and the specific location of that tree. Or you can 56 00:04:38.240 --> 00:04:42.350 aggregate the data up to an area of 100 meters by 100 meters or 57 00:04:42.350 --> 00:04:48.170 one hectare. We plan to expand our work next to Australia and 58 00:04:48.170 --> 00:04:52.160 then maybe to Eastern Africa, Southern Africa, Central Asia, 59 00:04:52.610 --> 00:04:56.840 and possibly other arid and semi arid areas.