Figure 1.
Workflow for façade color measurement with building classification.
Figure 1.
Workflow for façade color measurement with building classification.
Figure 2.
Street-level imagery acquisition at the sampling point.
Figure 2.
Street-level imagery acquisition at the sampling point.
Figure 3.
A color calibration demo by AWB and AEC methods. (a) original street view image and (b) after color calibration.
Figure 3.
A color calibration demo by AWB and AEC methods. (a) original street view image and (b) after color calibration.
Figure 4.
Street view image segmentation through Pyramid Scene Parsing Network. (a) Unobstructed façades, (b) obscured façades, (c) a low building proportion.
Figure 4.
Street view image segmentation through Pyramid Scene Parsing Network. (a) Unobstructed façades, (b) obscured façades, (c) a low building proportion.
Figure 5.
A total of 4965 street view images with four single-labeled and rearranged buildings are included. The first line is single-label class, from left to right: residential, public services, commercial services, and other facilities. The second line is the multi-label class, from left to right: public service and commerce, residence and commercial service, residence and public service, residence, and other facilities.
Figure 5.
A total of 4965 street view images with four single-labeled and rearranged buildings are included. The first line is single-label class, from left to right: residential, public services, commercial services, and other facilities. The second line is the multi-label class, from left to right: public service and commerce, residence and commercial service, residence and public service, residence, and other facilities.
Figure 6.
The number of training set images for each building category.
Figure 6.
The number of training set images for each building category.
Figure 7.
The study areas of the three metropolises (Shanghai, Nanjing and Hefei) in the Yangtze River Delta.
Figure 7.
The study areas of the three metropolises (Shanghai, Nanjing and Hefei) in the Yangtze River Delta.
Figure 8.
A qualitative example of building façade segmentation by the pre-trained PSPNet model. (a) Original street view image. (b) Ground truth. (c) Building semantic segmentation by PSPNet. (d) Qualitative example, blue is true positive (TP), red is false negative (FN), and blue is false positive (FP).
Figure 8.
A qualitative example of building façade segmentation by the pre-trained PSPNet model. (a) Original street view image. (b) Ground truth. (c) Building semantic segmentation by PSPNet. (d) Qualitative example, blue is true positive (TP), red is false negative (FN), and blue is false positive (FP).
Figure 9.
The color deviation of the two materials before and after color calibration in digital photos at different color temperatures.
Figure 9.
The color deviation of the two materials before and after color calibration in digital photos at different color temperatures.
Figure 10.
The area under the ROC curve (AUC) of all the trained networks evaluated by our test images, including DenseNet (a), EfficientNet (b), InceptionNet_v4 (c), and ResNeSt (d). The red line R represents the AUC of residence, the blue line B represents the AUC of commercial service, the yellow line A represents the AUC of public service, and the purple line O represents the AUC of other facilities.
Figure 10.
The area under the ROC curve (AUC) of all the trained networks evaluated by our test images, including DenseNet (a), EfficientNet (b), InceptionNet_v4 (c), and ResNeSt (d). The red line R represents the AUC of residence, the blue line B represents the AUC of commercial service, the yellow line A represents the AUC of public service, and the purple line O represents the AUC of other facilities.
Figure 11.
Comparison of our proposed measurement method with the field survey data.
Figure 11.
Comparison of our proposed measurement method with the field survey data.
Figure 12.
Color deviation histogram based on survey data measurement.
Figure 12.
Color deviation histogram based on survey data measurement.
Figure 13.
Mapping the dominant color of the building façade of Hefei, Nanjing, and Shanghai.
Figure 13.
Mapping the dominant color of the building façade of Hefei, Nanjing, and Shanghai.
Figure 14.
Mapping the building function of Hefei, Nanjing, and Shanghai.
Figure 14.
Mapping the building function of Hefei, Nanjing, and Shanghai.
Figure 15.
Some examples from street view images show the limitations of the proposed method. (a) Despite the color calibration, color deviations remain in the overexposed street view image. (b) The residential building with commercial service is not easy to identify. (c) The building in the street view photo tends to be a residential house, while the label from the OSM user is a hotel.
Figure 15.
Some examples from street view images show the limitations of the proposed method. (a) Despite the color calibration, color deviations remain in the overexposed street view image. (b) The residential building with commercial service is not easy to identify. (c) The building in the street view photo tends to be a residential house, while the label from the OSM user is a hotel.
Table 1.
Description of building class in the city.
Table 1.
Description of building class in the city.
Building Classifications | Description |
---|
Residential (R) | Buildings are for people living, including villas, apartments, and dormitories. |
Commercial service (B) | Buildings allow people to engage in various business activities, including retail, shopping malls, markets, hotels, restaurants, and entertainment facilities. |
Public services (A) | Buildings allow people to carry out various public activities, including office, education, health, culture, transportation, and tourism buildings. |
Other facilities (O) | Buildings or structures that appear in urban areas other than the above three. |
Table 2.
Valid street view image statistics.
Table 2.
Valid street view image statistics.
City | Hefei | Ratio | Nanjing | Ratio | Shanghai | Ratio |
---|
Sampling points | 49,140 | | 59,420 | | 55,998 | |
Total images | 94,244 | | 115,244 | | 110,974 | |
Valid images | 74,760 | 79.3% | 79,204 | 69.7% | 102,046 | 88.5% |
Invalid images | 19,484 | 20.7% | 36,040 | 31.3% | 13,198 | 11.5% |
Table 3.
Building façade segmentation performance on street-level images.
Table 3.
Building façade segmentation performance on street-level images.
Model | Precision | Recall | IoU |
---|
PSPNet (%) | 92.07 | 93.30 | 87.13 |
Table 4.
Materials, apparatus, and software.
Table 4.
Materials, apparatus, and software.
Materials |
---|
ID | Façade Material Name | Façade Color Samples | Standard HSV Value |
---|
MAT. 1 | Ceramic tiles | | H:198, S: 8%, V: 96% |
MAT. 2 | Veneer brick | | H: 16, S: 11%, V: 51% |
Apparatus/Product |
Digital camera/Canon EOS 60D |
Software/Contents |
Photoshop CS4: An image processing software developed by Adobe, used to obtain the HSV value of the image color. |
Table 5.
Multi-label classification performance of all the trained networks.
Table 5.
Multi-label classification performance of all the trained networks.
Type | DenseNet | EfficientNet | InceptionNet_v4 | ResNeSt |
---|
Residence (R) | 0.9008 | 0.9145 | 0.9162 | 0.9148 |
Commercial service (B) | 0.8968 | 0.8852 | 0.8814 | 0.9160 |
Public service (A) | 0.9518 | 0.9299 | 0.9552 | 0.9563 |
Other facilities (O) | 0.9504 | 0.9589 | 0.9608 | 0.9528 |
Overall | 0.9249 | 0.9221 | 0.9284 | 0.9349 |
Table 6.
Building classification accuracy for the 200 sampled images.
Table 6.
Building classification accuracy for the 200 sampled images.
Type | R | B | A | O | R + A | B + A |
---|
Number of samples | 46 | 42 | 38 | 30 | 20 | 24 |
Subclass accuracy | 84.8% | 88.1% | 89.5% | 86.7% | 85% | 87.5% |
Overall accuracy | 86.5% |
Table 7.
The data structure of façade color measurement and building classification results. The Munsell color system divides hues into ten kinds of colors: red (R), red-purple (R.P.), purple (P), purple-blue (P.B.), blue (B), blue-green (B.G.), green (G), green-yellow (G.Y.), yellow (Y), and yellow-red (Y.R.).
Table 8.
The statistical results of façade color on building classification in the three study areas.
Table 8.
The statistical results of façade color on building classification in the three study areas.
Hefei |
---|
Classification | 1st color | Proportion | 2nd color | Proportion | Proportion of other colors |
Commerce | Blue | 38.5% | Gray | 32.6% | 28.9% |
Public service | Gray | 20.6% | Yellow-red | 19.9% | 59.5% |
Residence | Gray | 42.4% | Yellow-red | 16.1% | 41.5% |
Other facilities | Gray | 61.2% | White | 13.9% | 24.9% |
Nanjing |
Classification | 1st color | Proportion | 2nd color | Proportion | Proportion of other colors |
Commerce | Blue | 31.8% | Bluish-Gray | 20.8% | 47.4% |
Public service | Bluish-Gray | 20.8% | Bluish-Gray | 18.7% | 60.5% |
Residence | Gray | 28.2% | Yellow-red | 17.7% | 54.1% |
Other facilities | Greenish-Gray | 68.5% | Gray | 9.6% | 21.9% |
Shanghai |
Classification | 1st color | Proportion | 2nd color | Proportion | Proportion of other colors |
Commerce | Blue | 47.3% | Gray | 9.6% | 43.1% |
Public service | Warm Gray | 24.6% | Greenish-Gray | 14.8% | 60.6% |
Residence | Yellow-red | 29.8% | Gray | 18.4% | 51.8% |
Other facilities | Gray | 51.7% | White | 8.7% | 39.6% |