• No results found

1. Adaptive histogram equalization technique for enhancement of coloured image quality

N/A
N/A
Protected

Academic year: 2020

Share "1. Adaptive histogram equalization technique for enhancement of coloured image quality"

Copied!
8
0
0

Loading.... (view fulltext now)

Full text

Loading

Figure

Figure 1. Illustration of pixel neighbourhoods for adaptive histogram equalisation
Figure 3. Original image
Figure 5. Histogram plot for Grayscale image
Figure 8 shows the image obtained after applying the histogram Equalisation to the original image
+2

References

Related documents

Hence, it is very easy to build real time virtual dressing room using suitable algorithms like skin color detection, face detection and lower body detection

The following data were analyzed by two-way analysis of variance (ANOV A) (presence of soil, larval density, and presence of soil x larval den- sity): number of climbers (larvae

As incremental subtrac- tions were always positive cervical to inflection point and negative incisal to it, the following can be derived: Cervically oriented shifts or errors

MGMT promoter methylation and 1p/19q co deletion of surgically resected pulmonary carcinoid and large cell neuroendocrine carcinoma RESEARCH Open Access MGMT promoter methylation and

WORLD JOURNAL OF SURGICAL ONCOLOGY Kwak et al World Journal of Surgical Oncology 2013, 11 77 http //www wjso com/content/11/1/77 RESEARCH Open Access Breast cancer after

In addition, F values in wood properties remained relatively higher from the 1st to 25th annual ring from the pith, although F value in ARW rapidly decreased with each increase

This figure coincides al- most exactly with that found for the first generation after the cross (41 percent, see above) and therefore would seem to point to the same

We also present the application of the quartic loss function to the parameter design problem in the case where the transfer function between a quality characteristic of interested