package localai import ( "github.com/labstack/echo/v4" "github.com/mudler/LocalAI/core/backend" "github.com/mudler/LocalAI/core/config" "github.com/mudler/LocalAI/core/http/middleware" "github.com/mudler/LocalAI/core/schema" "github.com/mudler/LocalAI/pkg/model" "github.com/mudler/LocalAI/pkg/utils" "github.com/mudler/xlog" ) // DetectionEndpoint is the LocalAI Detection endpoint https://localai.io/docs/api-reference/detection // @Summary Detects objects in the input image. // @Param request body schema.DetectionRequest true "query params" // @Success 200 {object} schema.DetectionResponse "Response" // @Router /v1/detection [post] func DetectionEndpoint(cl *config.ModelConfigLoader, ml *model.ModelLoader, appConfig *config.ApplicationConfig) echo.HandlerFunc { return func(c echo.Context) error { input, ok := c.Get(middleware.CONTEXT_LOCALS_KEY_LOCALAI_REQUEST).(*schema.DetectionRequest) if !ok || input.Model == "" { return echo.ErrBadRequest } cfg, ok := c.Get(middleware.CONTEXT_LOCALS_KEY_MODEL_CONFIG).(*config.ModelConfig) if !ok || cfg == nil { return echo.ErrBadRequest } xlog.Debug("Detection", "image", input.Image, "modelFile", "modelFile", "backend", cfg.Backend) image, err := utils.GetContentURIAsBase64(input.Image) if err != nil { return err } res, err := backend.Detection(image, ml, appConfig, *cfg) if err != nil { return err } response := schema.DetectionResponse{ Detections: make([]schema.Detection, len(res.Detections)), } for i, detection := range res.Detections { response.Detections[i] = schema.Detection{ X: detection.X, Y: detection.Y, Width: detection.Width, Height: detection.Height, ClassName: detection.ClassName, } } return c.JSON(200, response) } }