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A data transfer method for improving seed identification of maize (Zea mays) haploid breeding based on genetic similarity
Authors:Jianchu Lin  Jinlong Li  Weijun Li  Hong Qin  Shaojiang Chen
Abstract:Maize haploid breeding technology is able to identify haploid seeds non‐destructively, rapidly and at low cost with the help of Near‐infrared (NIR) spectral analysis. However, due to the hybridization of numerous parents and the low production rate of haploid, the haploid data collection becomes a burden for engineering this technology. Biologically, there are considerable similarities between the progeny of the same female parent and different male parents. Based on this advantage, similar spectral data can be transferred when the NIR technology is employed. A revised method of Transfer adaptive boost (TrAdaBoost) is proposed to improve identifying for the backpropagation neural network (BPNN) classifier. To avoid the negative transfer, a screening thresh is used to select out similar data, and the amount of these data are limited to join current training. The results show that the identification performances are improved significantly when the data amount is small. This method shows a high ability to make the seed identification more convenient for engineering maize haploid breeding.
Keywords:backpropagation neural network  data transfer  maize haploid seed identification  near‐infrared diffuse transmittance  TrAdaBoost
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