农业工程学报
農業工程學報
농업공정학보
2013年
5期
139-146
,共8页
图像处理%监控%亮度%边缘梯度%PSNR%猪舍
圖像處理%鑑控%亮度%邊緣梯度%PSNR%豬捨
도상처리%감공%량도%변연제도%PSNR%저사
image processing%monitoring%luminance%edge gradient%PSNR%pigpen
针对猪舍视频监控场景中常常遭遇局部亮度不均衡而引起后继图像分析困难问题,提出一种图像自适应局部亮度调整法(ALLA).首先为避免物体色度的干扰,原图像转换为YCbCr模型后,只利用亮度Y分量图像,根据最大类间方差(Ostu)将Y图像分为明暗二区;其次针对过亮和过暗的局部区域采用正弦函数进行非线性反向调整灰度值;最后,为评价处理后图像质量,提取测试图和基准图中的猪只对象轮廓边缘像素成对梯度值,通过假设检验判断二者差的集合均值是否存在明显变化.选择了典型3种猪舍环境图像,一种光线柔和,图像亮度质量较为理想;另外两种夜晚圈栏灯光和白天阳光导致景物本色出现偏差,即在光照强度高的局部区域灰度值低,反之则高.试验采用ALLA处理后的测试图像,测试PSNR(峰值信噪比)值均在31~78之间,表明没有引起图像质量显著下降;采用我们设计的假设检验方法,表明在显著性水平(α=0.95)时,测试图较之于标准灰度化图像有显著改变,因此,有利于后继的猪只目标分割工作.
針對豬捨視頻鑑控場景中常常遭遇跼部亮度不均衡而引起後繼圖像分析睏難問題,提齣一種圖像自適應跼部亮度調整法(ALLA).首先為避免物體色度的榦擾,原圖像轉換為YCbCr模型後,隻利用亮度Y分量圖像,根據最大類間方差(Ostu)將Y圖像分為明暗二區;其次針對過亮和過暗的跼部區域採用正絃函數進行非線性反嚮調整灰度值;最後,為評價處理後圖像質量,提取測試圖和基準圖中的豬隻對象輪廓邊緣像素成對梯度值,通過假設檢驗判斷二者差的集閤均值是否存在明顯變化.選擇瞭典型3種豬捨環境圖像,一種光線柔和,圖像亮度質量較為理想;另外兩種夜晚圈欄燈光和白天暘光導緻景物本色齣現偏差,即在光照彊度高的跼部區域灰度值低,反之則高.試驗採用ALLA處理後的測試圖像,測試PSNR(峰值信譟比)值均在31~78之間,錶明沒有引起圖像質量顯著下降;採用我們設計的假設檢驗方法,錶明在顯著性水平(α=0.95)時,測試圖較之于標準灰度化圖像有顯著改變,因此,有利于後繼的豬隻目標分割工作.
침대저사시빈감공장경중상상조우국부량도불균형이인기후계도상분석곤난문제,제출일충도상자괄응국부량도조정법(ALLA).수선위피면물체색도적간우,원도상전환위YCbCr모형후,지이용량도Y분량도상,근거최대류간방차(Ostu)장Y도상분위명암이구;기차침대과량화과암적국부구역채용정현함수진행비선성반향조정회도치;최후,위평개처리후도상질량,제취측시도화기준도중적저지대상륜곽변연상소성대제도치,통과가설검험판단이자차적집합균치시부존재명현변화.선택료전형3충저사배경도상,일충광선유화,도상량도질량교위이상;령외량충야만권란등광화백천양광도치경물본색출현편차,즉재광조강도고적국부구역회도치저,반지칙고.시험채용ALLA처리후적측시도상,측시PSNR(봉치신조비)치균재31~78지간,표명몰유인기도상질량현저하강;채용아문설계적가설검험방법,표명재현저성수평(α=0.95)시,측시도교지우표준회도화도상유현저개변,인차,유리우후계적저지목표분할공작.
The pigpen scene in video frames often suffer from local disproportion luminance, which leads to inconvenience in subsequent images analysis. In this paper, an adaptive local lightness adjusting algorithm (ALLA)is proposed. Firstly,original RGB (red, green, blue) image is converted into YCbCr space (luminance is denoted by Y, Cb and Cr are the blue-difference and red-difference) in order to avoid the interference from chroma in YCbCr space. Secondly, only the Y gray-scale image of YCbCr space is divided into 2 areas of light and dark by adopting Ostu method. Thirdly, a method of nonlinear-reverse adjustment based on sine mode is applied to improving the gray value in the corresponding zones( i.e. the excessive bright or dark ones). Finally, for evaluating the validity of luminance improvement, a method of hypothesis testing is put forward, i.e. the processed image by ALLA is viewed as the testing one, and another processed image by standard graying is viewed as the reference one for the same original pigpen image;paired gradients of each pixel of the same pig’s edge in both them are computed;all paired gradient differences forms a set;the mean of the set as a index of the image quality is judged whether there is a significant change through hypothesis testing. Three types of typical pigpen images as testing samples are chosen in experiments. One of them is that the illumination is gentle to result in the luminance quality is satisfactory. Others are that the evening lighting and sunshine in the pigpen can cause the deviation on nature luminance, i.e. in the Y gray-scale image the low gray value in the zone vs. the high illumination intensity, otherwise, the high gray value in the zone. PSNRs of the testing ones after using ALLA are between 31 and 78, i.e. the quality level of the testing ones don’t decrease significantly. Furthermore, it is verified that the luminance level of the testing one are better than one of the reference one with the significance levelα=0.95 based on our method of hypothesis testing. Meanwhile, another experiment shows the converged contour of pig in one other testing one by using same level-set method is more approximated to its actual contour than the reference. The results prove that ALLA is helpful for subsequent works on pig target segmentation.