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Pattern Recognition of Air Photographs for Estimation of Snow Reserves

Published online by Cambridge University Press:  20 January 2017

W. Good
Affiliation:
Swiss Federal Institute for Snow and Avalanche Research, 7260 Weissfluhjoch/Davos, Switzerland
J. Martinec
Affiliation:
Swiss Federal Institute for Snow and Avalanche Research, 7260 Weissfluhjoch/Davos, Switzerland
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Abstract

A certain snow-covered area determined from air photographs in different years can contain different volumes of snow. The pattern recognition of snow fields reveals whether the snow reserves are relatively high or low for the given snow coverage. It also signals a short terra increase of the snow-covered area by summer snowfall.

Type
Research Article
Copyright
Copyright © International Glaciological Society 1987

Introduction

A typical feature of the seasonal snow cover in the mountains is its diminishing areal extent during the melt season. This phenomenon greatly reduces the risk of floods from snow melt in mountainous basins. Since the advent of remote sensing, the snow cover can be efficiently monitored. Efforts are in progress to improve the methods of snow-cover mapping with the use of orthophotographs from aircraft and of satellite data. This paper deals with estimating the snow reserves in terms of the water equivalent from this two-dimensional information by the pattern recognition of structured snowfields.

Snow-Covered Area with Regard to Snow Accumulation

The snow-covered area had already been used as an index of the snow accumulation in terms of water equivalent 50 years ago (Potts 1937). The subsequent run-off volumes in various years deviated sometimes from forecasts based on such relations. These discrepancies were at first attributed to the varying summer precipitation in the respective years. Another source of error was the crude method of estimating the snow-covered area just from panoramic terrestrial photographs of a mountain range.

In the following decades, the accuracy and efficiency of snow - cover mapping were improved by terrestrial observations (Reference Garstka, Love, Goodell and BertieGarstka and others 1958), air photographs and in particular by remote sensing from satellites. However, the old assumption linking the snow-covered area with the water volume stored in the snow cover remained (Reference Ødegaard, Andersen, Østrem, Rango and PetersonØdegaard and others 1980; Reference Shafer, Leaf, Rango and PetersonShafer and Leaf 1980).

At the same time, detailed measurements in well-equipped representative basins (Reference MartinecMartinec 1980) have shown that there is no unequivocal relation between the areal extent of the seasonal snow cover in a mountain basin and the snow accumulation in terms of water equivalent. As is explained elsewhere (Reference Hall and MartinecHall and Martinec 1985) the gradually decreasing area of the snow cover reflects not only the initial snow accumulation, but also climatic conditions during the snow-melt season of the given year. In order to overcome this problem, a method of evaluating the snow accumulation from a sequence of satellite or aircraft images of the snow cover has been developed (Reference Martinec and RangoMartinec and Rango 1987). In this paper, the pattern of snow-cover boundaries is used to estimate whether a certain areal extent of the seasonal snow cover has a high or low snow-water equivalent.

Image Analysis and Pattern Recognition

Working Hypothesis

Ideally, a horizontal, two-dimensional surface is either covered with snow or it is void. In reality the transition time between these two states during ablation is short and becomes longer as the roughness of the surface increases. In mountainous areas where the topography is very complicated, the delay is even more accentuated because of the elevation range and temperature lapse rate.

During the process of disintegration, a contiguous snow cover successfully reveals details from the subjacent terrain, A given area of snow represents smaller amounts of water if more topographic details are visible (Reference GoodGood 1983). These signatures seem to be typical and reproducible for given areas and describe not only a state of the snow cover during melting, but they also represent the quantity of snow. In the present paper we try to quantify this hypothesis.

Methods used

It soon became evident that the resolution of the images used was one of the most critical conditions in defining the relevant structures. The resolution that is necessary to reveal the required topographic details, is of the order of a few metres.

Resolution, however, is not of itself sufficient; it has to be considered in relation to the areal extent of the test site under investigation (e.g. Dischma Valley, Swiss Alps, European Alps), and to the point resolution of the image analysis system. For the Dischma Valley, air photographs appear to be adequate. We work with a HAMAMATSU slow-scan video camera with a typical point resolution of 512 × 512 pixels (maximum 1024 × 1024 pixels) corresponding to a pixel size of 11.2 m. If the relevant topographic structures are finer or the resolution due to the pixel size is too coarse, no significant analysis is possible. Below this limit the patches without snow have only the effect of reducing the albedo. The snow appears to be slightly darker which influences the selection of the discriminant level. This does not, however, reveal the required signatures. These limitations are found in photographs which represent typical new snow situations such as that on 29 August 1985, when about 85% of the test area was covered with new snow. In spite of its large extent, this short-lived snow cover contained on the average only several centimetres of water equivalent. We tried various methods to quantify the signatures (structures) and to correlate the resulting parameters with the quantity of water stored in the corresponding snow cover.

Data set

Orthophotographs (1 : 50 000) from the Dischma Valley (flights between 1972 and 1981) were separated into an upper and a lower part in order to improve the point resolution and also to increase the number of samples (22). The upper part with an area of 21.5 km2, ranging from 1900 to 3150 m a.s.l., is examined in this study. Care must be taken to avoid those samples where new snow would cause a bias in the evaluation.

A/D conversion

The 22 samples were digitized with the slow-scan video camera linked to a PDP 11/44. The grey level of each pixel is evaluated in an 8 bit scale. The 262144 intensities of each picture are stored on magnetic tapes. The conversion of one frame (512 × 512 pixel) takes roughly 90 sec.

Preprocessing

The only subjective step, and perhaps the most important one in the processing is the selection of the adequate limit where the intensity of a pixel signal is either a snow-covered or a snow-free area. In an ideal picture a single discriminant level may exist, but even here it has to be selected so that the original and the binary picture are as similar as possible. In real pictures, a dramatic amount of information is lost if one discriminant level only is used to split the pixels into a snow/no-snow binary picture. The reason is the slow and continuous variation of intensities over the whole picture and the local differences due to changing lighting conditions, snow quality, vegetation etc.

Local image operations of the edge-detection type were applied. The enhancement algorithm checks every pixel against its four nearest neighbours. A transition white-black is initiated if the pixel in the centre is slightly darker, within a discrimination band, than the surrounding ones, or if, in an absolute sense, it is darker than the lower limit of the discrimination band. In the enhanced pictures many of the required details reappear (Fig.1). The reproducibility of the areal extent of the snow cover could be kept within ±6%.

Fig. 1 Digitally enhanced orthophotograph of Dischma Valley. Pixel size is 11.2m (situation from 5 July 1974).

Parametrization

A set of pattern recognition parameters and a set of simple point count parameters were computed after image enhancement. The first group normally represents the geometry of the structures in a more comprehensive way. Because of the small extent of many structural details, the pattern recognition tended to reflect the coordinate frame rather than the structures. Therefore we worked with the less critical set of point count parameters.

Numerical Analysis

The extent of the snow cover in the analysed situations represented 57% and 93% respectively of the total area. We expect certain parameters describing the snow-free patches (topography) to be the important ones. A factorial analysis (Reference Cooley and LohnesCooley and Lohnes 1973; SSP, ISPAHAN) yields an orthogonal coordinate frame where the axes (principal components) are linear combinations of the initial parameters. Axis number one, belonging to the first (largest) eigenvalue, is selected in such a way that the total dispersion of the points is maximized. The second one, associated with the second largest eigenvalue and all the following ones are mutually orthogonal.

Comparing the measured quantities of water from the respective snow covers with the linear combinations of parameters, we found reasonable descriptions of the two situations.

Models

The first principal component contains the information about the areal extent of the snow cover (RHO, RSD, RMA). (Table I). The following combination of number of intersections and distance between snow patches relates to some extent to the run-off volumes of water (ranging from 4 to 16 × 106 m3) from the snow cover (Fig.2).

Fig. 2 Run-off Q as a function of the number of snow/void and void/snow transitions and of the free distance (PRC02).

Table I Point Count Parameters

PRC02 = 0.4 × INS + 0.4 × INS/FRE - 0.38 × FRE + ...

The respective water volumes stored in snow are represented by the measured discharge volumes from the test area. The snow reserves are slightly higher in view of the run-off losses and problems in separating the snow melt and rain component, as explained in the next section. The linear relationship between the water volume and PRC02 plotted in Fig.2 has a coefficient of determination of R2 = 0.89. The differences in discharge volumes corresponding to approximately equal snow-covered areas, however, are significant. In the group of 56.63% ± 3.63% snow coverage, a discharge of 3.9 × 106 m3 corresponds to the individual with 58.2% of snow, whereas 6.8 × 106 m3 corresponds to the individual with 51.9% of snow. This contradiction to the areal extent can only be resolved with another combination of parameters describing the variability of geometric features of the snow cover: minimum of snow patch diameters and of covered area and difference of standard deviations of diameters of patches of snow and void. This finer discrimination is accomplished by plotting Q versus PRC05 (see Fig.3).

Fig. 3 Run-off Q as a function of PRCO5. For a similar extent of the snow cover two typical situations (“high”, “low”) can be resolved.

PRC05 = 0.58 × DMI + 0.47 × RMI + 0.31 × FSD - 0.32 × DSD + ...

The regression coefficient is 0.987. The same model is not directly applicable to the 93% group; apparently the 7% of the area that is snow-free has not enough structural details.

Comparison of Estimated Snow Reserves with Measurements

The years 1972, 1974, 1976, and 1978 have been selected to show that an approximately equal snow-covered area in the alpine basin Dischma can contain either a high or a low snow volume. The years 1972 and 1976 are evaluated in the previous section as “low”, and the years 1974 and 1978 as “high”. This is in agreement with the direct point measurements at testsite, 2540 m a.s.l., which can be related to the examined test section of the Dischma basin.

The estimated snow reserves can also be compared with the resulting run-off volumes. To this effect, the run-off from the test area of 21.5 km2 was derived from a recording water gauging station situated up-stream (catchment area 12.5 km2) and from another recording water gauging station at the outlet of the Dischma basin (representing 43.3 km2). Data are summarized in Table II, where S is the snow-covered area evaluated from an aircraft Orthophotograph on the given date (100 × RHO), Hw is the point water equivalent of the snow cover measured at F Weissfluhjoch. R is the run-off depth from the test area of 21.5 km2 and Px0.7 is precipitation during run-off period multiplied by a run-off coefficient.

Table II Measured Water Equivalents of Snow and Run-Off Volumes for Comparison with the Estimated Snow Reserves

Since there is no clear-cut time limit of snow melt run-off, the daily run-off volumes were added in each year until a total of 150 degree-days was reached from temperature measurements at Weissfluhjoch, 2693 m a.s.l. By subtracting the run-off from precipitation from the total run-off, run-off depths related to the initial snow reserves are obtained.

The years 1974, 1975, 1979, and 1980 show again a similar snow coverage at certain dates, considerably higher than in the previous example. In this group, however, it was not possible to discriminate between the respective years by the axis PRC05. As shown in Table III, the snow reserves are very similar in 1974, 1975, 1980 and distinctly lower in 1979. Also, as already mentioned, the snow-free area is too small to provide enough details for the analysis. The symbols are the same as in Table II. The run-off coefficient for precipitation was increased slightly to 0.75 because the snow-covered area is larger than in the previous case so that smaller losses are indicated. Since the run-off period starts at an earlier stage of the snow melt season than in the previous comparison, the number of degree-days measured at Weissfluhjoch was increased to 225 to obtain the respective final dates in each year. The run-off depths are again computed for the periods thus defined and run-off related to precipitation is subtracted in order to obtain values referring to the estimated snow reserves.

Table III Measured Water Equivalents and Run-Off Volumes for Comparison with the Estimated Snow Reserves

Conclusion

By the above method it is possible to recognize whether a certain areal extent (40–70%) of the seasonal snow cover contains a high or a low volume of snow. In this study the required spatial resolution of snow cover images was of the order of 10 m. If new snow is superimposed on the seasonal snow cover during the snow melt season, the fine structure of snow fields and the complex boundaries prevent the snow-covered and snow-free patches from being recognized. The identification of such scenes helps to avoid errors in periodical snow-cover mapping.

References

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Figure 0

Fig. 1 Digitally enhanced orthophotograph of Dischma Valley. Pixel size is 11.2m (situation from 5 July 1974).

Figure 1

Fig. 2 Run-off Q as a function of the number of snow/void and void/snow transitions and of the free distance (PRC02).

Figure 2

Table I Point Count Parameters

Figure 3

Fig. 3 Run-off Q as a function of PRCO5. For a similar extent of the snow cover two typical situations (“high”, “low”) can be resolved.

Figure 4

Table II Measured Water Equivalents of Snow and Run-Off Volumes for Comparison with the Estimated Snow Reserves

Figure 5

Table III Measured Water Equivalents and Run-Off Volumes for Comparison with the Estimated Snow Reserves