The invention relates to the technical field of heavy
metal detection, in particular to a method for rapidly detecting heavy
metal pollution to
shellfish. The method comprises the following steps: firstly, preparing samples; secondly, carrying out hyperspectral image collection, correction,
data extraction and preprocessing on the samples; thirdly, carrying out neighbourhood evidence
decision making-based
wave band selection on data, and extracting a subset of a characteristic waveband; fourthly, establishing a classification detection model, wherein the classification detection model comprises a
quantum neural network classifier and an integrated learning classifier, the
quantum neural network classifier is used for carrying out
pollution and non-
pollution detection classification on theshellfish by utilizing the subset of the selected waveband, and the integrated learning classifier is used for identifying and classifying different kinds of heavy
metal pollution to the
shellfish byutilizing the subset of the selected waveband; finally, obtaining a detection result of the samples. According to the method disclosed by the invention, data collection of the samples is carried out by utilizing a hyperspectral detection technology, waveband selection is carried out through the neighbourhood evidence
decision making theory, classification detection is carried out by applying the
quantum neural network classifier and the integrated learning classifier, the operation is simple and fast, better testing reproducibility is obtained, no any chemical
reagent is required for assistingduring an analysis process, and pollution to environment is not generated.