农业工程学报
農業工程學報
농업공정학보
2013年
17期
113-120
,共8页
红外图像%图像融合%光学%非子采样轮廓波%生猪异常监测
紅外圖像%圖像融閤%光學%非子採樣輪廓波%生豬異常鑑測
홍외도상%도상융합%광학%비자채양륜곽파%생저이상감측
infrared imaging%image fusion%optics%nonsubsampled contourlet transform%monitoring pigs abnormal
该文针对生猪红外热图像和光学图像的融合,提出一种基于非子采样轮廓波的图像融合算法。在图像多尺度、多方向分解的基础上,设计了基于邻域平均能量和邻域方差的低频子带系数加权融合规则,以及基于邻域能量最大的带通系数融合规则。针对亮度-色度-饱和度变换法(intensity-hue-saturation transform,IHS)、小波变换法(discrete wavelet transform,DWT)、轮廓波变换法(contourlet transform,CT)等融合方法以及非子采样轮廓波变换(nonsubsampled contourlet transform, NSCT)域下不同融合规则进行了对比试验,试验结果表明该文算法具有较好的融合效果。定量融合评价指标中,平均梯度指标高于 IHS、DWT、CT 等方法25%以上,边缘信息保持指标高于其他3种方法23%以上。该文方法的提出对于改善生猪异常视觉监测中的前景轮廓提取具有较大意义;同时,对进一步开展猪体部位区域温度特征提取,建立生猪多源特征融合的计算机视觉异常监测系统,提高生猪异常预警可靠性具有积极意义。
該文針對生豬紅外熱圖像和光學圖像的融閤,提齣一種基于非子採樣輪廓波的圖像融閤算法。在圖像多呎度、多方嚮分解的基礎上,設計瞭基于鄰域平均能量和鄰域方差的低頻子帶繫數加權融閤規則,以及基于鄰域能量最大的帶通繫數融閤規則。針對亮度-色度-飽和度變換法(intensity-hue-saturation transform,IHS)、小波變換法(discrete wavelet transform,DWT)、輪廓波變換法(contourlet transform,CT)等融閤方法以及非子採樣輪廓波變換(nonsubsampled contourlet transform, NSCT)域下不同融閤規則進行瞭對比試驗,試驗結果錶明該文算法具有較好的融閤效果。定量融閤評價指標中,平均梯度指標高于 IHS、DWT、CT 等方法25%以上,邊緣信息保持指標高于其他3種方法23%以上。該文方法的提齣對于改善生豬異常視覺鑑測中的前景輪廓提取具有較大意義;同時,對進一步開展豬體部位區域溫度特徵提取,建立生豬多源特徵融閤的計算機視覺異常鑑測繫統,提高生豬異常預警可靠性具有積極意義。
해문침대생저홍외열도상화광학도상적융합,제출일충기우비자채양륜곽파적도상융합산법。재도상다척도、다방향분해적기출상,설계료기우린역평균능량화린역방차적저빈자대계수가권융합규칙,이급기우린역능량최대적대통계수융합규칙。침대량도-색도-포화도변환법(intensity-hue-saturation transform,IHS)、소파변환법(discrete wavelet transform,DWT)、륜곽파변환법(contourlet transform,CT)등융합방법이급비자채양륜곽파변환(nonsubsampled contourlet transform, NSCT)역하불동융합규칙진행료대비시험,시험결과표명해문산법구유교호적융합효과。정량융합평개지표중,평균제도지표고우 IHS、DWT、CT 등방법25%이상,변연신식보지지표고우기타3충방법23%이상。해문방법적제출대우개선생저이상시각감측중적전경륜곽제취구유교대의의;동시,대진일보개전저체부위구역온도특정제취,건립생저다원특정융합적계산궤시각이상감측계통,제고생저이상예경가고성구유적겁의의。
Recently, given the new trends to higher efficiency and automation in livestock farming, research of livestock health monitoring through computer vision has been an active area. Our team has concentrated on pig health monitoring for some time. It was found that pig contour segmentation and feature extraction are unstable and disturbed by pig manure and uneven illumination distribution in the rough environment of a pig house. In this paper, an image fusion method based on the nonsubsampled contourlet transform (NSCT) is presented to improve the stability and accuracy of pig contour segmentation. First, the infrared thermal image and the optical image of a pig, which have been registered, are decomposed by NSCT. After that, a group of low frequency sub-band coefficients and multi-directional band-pass sub-band coefficients of each source image could be obtained. Secondly, different fusion rules for low frequency sub-band coefficients and band-pass sub-band coefficients were proposed. For the fusion of low frequency sub-band coefficients, both the factors of average energy and variance of neighbor area were considered to compute a combined value first. Then, weighted values were obtained based on it. The weighted average results of the coefficients of each image were selected as the final low frequency sub-band coefficients of fusion image. For the band-pass sub-band coefficients, the fusion coefficients were selected based on the rule of maximum energy of a neighbor area. Finally, the fusion image was obtained through inverse NSCT. In experiments, a FLIR T250 infrared thermal imager was used to acquire IR thermal image and optical image at Xima animal husbandry corporation in Zhenjiang city, Jiangsu Province. Before fusing, a pair of IR and optical experiment images with resolution of 452×339 were obtained, which are registered by using the method of contour matching of radial line feature points. Then, a group of tests were completed by using different image fusion methods, including IHS, DWT, contourlet transform and the proposed algorithm. The comparative results show that the proposed algorithm gives the better fusion effect, the average gradient value is about 25%and the quality of edge information remained about 23% higher than the other three methods. The contour segmentation results of fusion images by using Otsu method also demonstrate the good performance of the proposed algorithm. Furthermore, to contrast with different fusion rules in NSCT field, another group of tests illustrated the better segmentation result compared with the other three rules. All the experimental results demonstrated that the proposed algorithm improved the stability and accuracy of pig contour segmentation, which provides a basis for the further research of multi-senor image feature extraction for pig health monitoring.