/// <summary> /// 人脸识别 /// </summary> /// <returns></returns> public JsonResult FaceDistinguish() { // 设置APPID/AK/SK var API_KEY = "mxzzu1vLxca9KjnLwBCgOZs5"; //你的 Api Key var SECRET_KEY = "D9CkVbdziW9GrHiAZDENt8rOf0tVw9im"; //你的 Secret Key var client = new Baidu.Aip.Face.Face(API_KEY, SECRET_KEY); client.Timeout = 60000; // 修改超时时间 var imageType = "BASE64"; //BASE64 URL string imgData64 = Request["imgData64"]; imgData64 = imgData64.Substring(imgData64.IndexOf(",") + 1); //将‘,’以前的多余字符串删除 ResultInfo result = new ResultInfo(); try { var groupId = "TestGroupA"; var userId = "TestUserA"; var result323 = client.Detect(imgData64, imageType); //活体检测阈值是多少 //0.05 活体误拒率:万分之一;拒绝率:63.9% //0.3 活体误拒率:千分之一;拒绝率:90.3% //0.9 活体误拒率:百分之一;拒绝率:97.6% //1误拒率: 把真人识别为假人的概率. 阈值越高,安全性越高, 要求也就越高, 对应的误识率就越高 //2、通过率=1-误拒率 //所以你thresholds参数返回 和 face_liveness 比较大于推荐值就是活体 ////活体判断 var faces = new JArray { new JObject { { "image", imgData64 }, { "image_type", "BASE64" } } }; var Living = client.Faceverify(faces); //活体检测交互返回 var LivingJson = Newtonsoft.Json.JsonConvert.SerializeObject(Living); var LivingObj = Newtonsoft.Json.JsonConvert.DeserializeObject(LivingJson) as JObject; if (LivingObj["error_code"].ToString() == "0" && LivingObj["error_msg"].ToString() == "SUCCESS") { var Living_result = Newtonsoft.Json.JsonConvert.DeserializeObject(LivingObj["result"].ToString()) as JObject; var Living_list = Living_result["thresholds"]; double face_liveness = Convert.ToDouble(Living_result["face_liveness"]); var frr = Newtonsoft.Json.JsonConvert.SerializeObject(Living_list.ToString()); var frr_1eObj = Newtonsoft.Json.JsonConvert.DeserializeObject(Living_list.ToString()) as JObject; double frr_1e4 = Convert.ToDouble(frr_1eObj["frr_1e-4"]); if (face_liveness < frr_1e4) { result.info = "识别失败:这是相片之类的非活体!"; return(Json(result, JsonRequestBehavior.AllowGet)); } } //首先查询是否存在人脸 var result2 = client.Search(imgData64, imageType, groupId); var strJson = Newtonsoft.Json.JsonConvert.SerializeObject(result2); var o2 = Newtonsoft.Json.JsonConvert.DeserializeObject(strJson) as JObject; //判断是否存在当前人脸,相识度是否大于80 if (o2["error_code"].ToString() == "0" && o2["error_msg"].ToString() == "SUCCESS") { var result_list = Newtonsoft.Json.JsonConvert.DeserializeObject(o2["result"].ToString()) as JObject; var user_list = result_list["user_list"]; var Obj = JArray.Parse(user_list.ToString()); foreach (var item in Obj) { //80分以上可以判断为同一人,此分值对应万分之一误识率 var score = Convert.ToInt32(item["score"]); if (score > 80) { result.info = result2.ToString(); result.res = true; result.startcode = 221; return(Json(result, JsonRequestBehavior.AllowGet)); } } } else { result.info = strJson.ToString(); result.res = false; return(Json(result, JsonRequestBehavior.AllowGet)); } } catch (Exception e) { result.info = e.Message; } return(Json(result, JsonRequestBehavior.AllowGet)); }