Nondestructive detection of pork comprehensive quality based on spectroscopy and support vector machine

Pork is one of the highly consumed meat item in the world. With growing improvement of living standard, concerned stakeholders including consumers and regulatory body pay more attention to comprehensive quality of fresh pork. Different analytical-laboratory based technologies exist to determine quality attributes of pork. However, none of the technologies are able to meet industrial desire of rapid and non-destructive technological development. Current study used optical instrument as a rapid and non-destructive tool to classify 24 h-aged pork longissimus dorsi samples into three kinds of meat (PSE, Normal and DFD), on the basis of color L* and pH24. Total of 66 samples were used in the experiment. Optical system based on Vis/NIR spectral acquisition system (300-1100 nm) was self- developed in laboratory to acquire spectral signal of pork samples. Median smoothing filter (M-filter) and multiplication scatter correction (MSC) was used to remove spectral noise and signal drift. Support vector machine (SVM) prediction model was developed to classify the samples based on their comprehensive qualities. The results showed that the classification model is highly correlated with the actual quality parameters with classification accuracy more than 85%. The system developed in this study being simple and easy to use, results being promising, the system can be used in meat processing industry for real time, non-destructive and rapid detection of pork qualities in future.

[1]  Eva Mlyneková,et al.  Effect of transport, rest period and temperature on pork quality from different countries. , 2013 .

[2]  Alma Delia Alarcón Rojoa,et al.  Incidencia de carne pálida-suave-exudativa (PSE) y oscura- firme-seca (DFD) en cerdos sacrificados en la región del Bajío en México Incidence of PSE and DFD muscle in pigs slaughtered in Mexico's Bajio region , 2005 .

[3]  Ying Xia RAPID DETECTION OF SUGAR CONTENT AND pH IN BEER BY USING SPECTROSCOPY TECHNIQUE COMBINED WITH SUPPORT VECTOR MACHINES , 2008 .

[4]  Yankun Peng,et al.  Influence of Distance between Optical Fiber Probe and Sample on Pork Quality Detection Results , 2013 .

[5]  Alma Delia Alarcón Rojo,et al.  Incidencia de carne pálida-suave-exudativa (PSE) y oscura-firme-seca (DFD) en cerdos sacrificados en la región del Bajío en México , 2005 .

[6]  Juraj Mlynek,et al.  Influence of the time of housing on the quality of pig meat , 2011 .

[7]  Li Wang RAPID DETECTION OF SUGAR CONTENT AND pH IN BEER BY USING SPECTROSCOPY TECHNIQUE COMBINED WITH SUPPORT VECTOR MACHINES: RAPID DETECTION OF SUGAR CONTENT AND pH IN BEER BY USING SPECTROSCOPY TECHNIQUE COMBINED WITH SUPPORT VECTOR MACHINES , 2008 .

[8]  Danuta Jaworska,et al.  Technological and sensory pork quality in relation to muscle and drip loss protein profiles , 2012, European Food Research and Technology.

[9]  Vladimir Tomović,et al.  Influence of seasons on pig halves and meat quality (M. longissimus dorsi) of three-race hybrids. , 2009 .

[10]  Wei Wang,et al.  [Rapid nondestructive detection of water content in fresh pork based on spectroscopy technique combined with support vector machine]. , 2012, Guang pu xue yu guang pu fen xi = Guang pu.

[11]  Mao Hanping,et al.  Prediction of nitrogen content rate of paddy rice leaf based on GA-LS-SVM. , 2010 .